test_engine.py 181 KB
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# coding: utf-8
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import copy
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import itertools
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import json
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import math
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import pickle
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import platform
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import random
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import re
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from os import getenv
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from pathlib import Path
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from shutil import copyfile
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import numpy as np
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import psutil
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import pytest
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from scipy.sparse import csr_matrix, isspmatrix_csc, isspmatrix_csr
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from sklearn.datasets import load_svmlight_file, make_blobs, make_multilabel_classification
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from sklearn.metrics import average_precision_score, log_loss, mean_absolute_error, mean_squared_error, roc_auc_score
from sklearn.model_selection import GroupKFold, TimeSeriesSplit, train_test_split
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import lightgbm as lgb
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from lightgbm.compat import PANDAS_INSTALLED, pd_DataFrame, pd_Series
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from .utils import (
    SERIALIZERS,
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    assert_all_trees_valid,
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    assert_silent,
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    dummy_obj,
    load_breast_cancer,
    load_digits,
    load_iris,
    logistic_sigmoid,
    make_synthetic_regression,
    mse_obj,
    pickle_and_unpickle_object,
    sklearn_multiclass_custom_objective,
    softmax,
)
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decreasing_generator = itertools.count(0, -1)


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def logloss_obj(preds, train_data):
    y_true = train_data.get_label()
    y_pred = logistic_sigmoid(preds)
    grad = y_pred - y_true
    hess = y_pred * (1.0 - y_pred)
    return grad, hess
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def multi_logloss(y_true, y_pred):
    return np.mean([-math.log(y_pred[i][y]) for i, y in enumerate(y_true)])

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def top_k_error(y_true, y_pred, k):
    if k == y_pred.shape[1]:
        return 0
    max_rest = np.max(-np.partition(-y_pred, k)[:, k:], axis=1)
    return 1 - np.mean((y_pred[np.arange(len(y_true)), y_true] > max_rest))


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def constant_metric(preds, train_data):
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    return ("error", 0.0, False)
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def decreasing_metric(preds, train_data):
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    return ("decreasing_metric", next(decreasing_generator), False)
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def categorize(continuous_x):
    return np.digitize(continuous_x, bins=np.arange(0, 1, 0.01))


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def test_binary():
    X, y = load_breast_cancer(return_X_y=True)
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
    params = {
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        "objective": "binary",
        "metric": "binary_logloss",
        "verbose": -1,
        "num_iteration": 50,  # test num_iteration in dict here
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    }
    lgb_train = lgb.Dataset(X_train, y_train)
    lgb_eval = lgb.Dataset(X_test, y_test, reference=lgb_train)
    evals_result = {}
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    gbm = lgb.train(
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        params, lgb_train, num_boost_round=20, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
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    )
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    ret = log_loss(y_test, gbm.predict(X_test))
    assert ret < 0.14
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    assert len(evals_result["valid_0"]["binary_logloss"]) == 50
    assert evals_result["valid_0"]["binary_logloss"][-1] == pytest.approx(ret)
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def test_rf():
    X, y = load_breast_cancer(return_X_y=True)
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
    params = {
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        "boosting_type": "rf",
        "objective": "binary",
        "bagging_freq": 1,
        "bagging_fraction": 0.5,
        "feature_fraction": 0.5,
        "num_leaves": 50,
        "metric": "binary_logloss",
        "verbose": -1,
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    }
    lgb_train = lgb.Dataset(X_train, y_train)
    lgb_eval = lgb.Dataset(X_test, y_test, reference=lgb_train)
    evals_result = {}
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    gbm = lgb.train(
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        params, lgb_train, num_boost_round=50, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
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    )
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    ret = log_loss(y_test, gbm.predict(X_test))
    assert ret < 0.19
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    assert evals_result["valid_0"]["binary_logloss"][-1] == pytest.approx(ret)
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@pytest.mark.parametrize("objective", ["regression", "regression_l1", "huber", "fair", "poisson", "quantile"])
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def test_regression(objective):
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    X, y = make_synthetic_regression()
    y = np.abs(y)
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    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
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    params = {"objective": objective, "metric": "l2", "verbose": -1}
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    lgb_train = lgb.Dataset(X_train, y_train)
    lgb_eval = lgb.Dataset(X_test, y_test, reference=lgb_train)
    evals_result = {}
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    gbm = lgb.train(
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        params, lgb_train, num_boost_round=50, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
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    )
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    ret = mean_squared_error(y_test, gbm.predict(X_test))
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    if objective == "huber":
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        assert ret < 430
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    elif objective == "fair":
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        assert ret < 296
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    elif objective == "poisson":
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        assert ret < 193
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    elif objective == "quantile":
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        assert ret < 1311
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    else:
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        assert ret < 343
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    assert evals_result["valid_0"]["l2"][-1] == pytest.approx(ret)
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def test_missing_value_handle():
    X_train = np.zeros((100, 1))
    y_train = np.zeros(100)
    trues = random.sample(range(100), 20)
    for idx in trues:
        X_train[idx, 0] = np.nan
        y_train[idx] = 1
    lgb_train = lgb.Dataset(X_train, y_train)
    lgb_eval = lgb.Dataset(X_train, y_train)

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    params = {"metric": "l2", "verbose": -1, "boost_from_average": False}
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    evals_result = {}
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    gbm = lgb.train(
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        params, lgb_train, num_boost_round=20, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
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    )
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    ret = mean_squared_error(y_train, gbm.predict(X_train))
    assert ret < 0.005
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    assert evals_result["valid_0"]["l2"][-1] == pytest.approx(ret)
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def test_missing_value_handle_more_na():
    X_train = np.ones((100, 1))
    y_train = np.ones(100)
    trues = random.sample(range(100), 80)
    for idx in trues:
        X_train[idx, 0] = np.nan
        y_train[idx] = 0
    lgb_train = lgb.Dataset(X_train, y_train)
    lgb_eval = lgb.Dataset(X_train, y_train)

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    params = {"metric": "l2", "verbose": -1, "boost_from_average": False}
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    evals_result = {}
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    gbm = lgb.train(
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        params, lgb_train, num_boost_round=20, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
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    )
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    ret = mean_squared_error(y_train, gbm.predict(X_train))
    assert ret < 0.005
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    assert evals_result["valid_0"]["l2"][-1] == pytest.approx(ret)
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def test_missing_value_handle_na():
    x = [0, 1, 2, 3, 4, 5, 6, 7, np.nan]
    y = [1, 1, 1, 1, 0, 0, 0, 0, 1]

    X_train = np.array(x).reshape(len(x), 1)
    y_train = np.array(y)
    lgb_train = lgb.Dataset(X_train, y_train)
    lgb_eval = lgb.Dataset(X_train, y_train)

    params = {
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        "objective": "regression",
        "metric": "auc",
        "verbose": -1,
        "boost_from_average": False,
        "min_data": 1,
        "num_leaves": 2,
        "learning_rate": 1,
        "min_data_in_bin": 1,
        "zero_as_missing": False,
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    }
    evals_result = {}
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    gbm = lgb.train(
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        params, lgb_train, num_boost_round=1, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
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    )
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    pred = gbm.predict(X_train)
    np.testing.assert_allclose(pred, y)
    ret = roc_auc_score(y_train, pred)
    assert ret > 0.999
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    assert evals_result["valid_0"]["auc"][-1] == pytest.approx(ret)
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def test_missing_value_handle_zero():
    x = [0, 1, 2, 3, 4, 5, 6, 7, np.nan]
    y = [0, 1, 1, 1, 0, 0, 0, 0, 0]

    X_train = np.array(x).reshape(len(x), 1)
    y_train = np.array(y)
    lgb_train = lgb.Dataset(X_train, y_train)
    lgb_eval = lgb.Dataset(X_train, y_train)

    params = {
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        "objective": "regression",
        "metric": "auc",
        "verbose": -1,
        "boost_from_average": False,
        "min_data": 1,
        "num_leaves": 2,
        "learning_rate": 1,
        "min_data_in_bin": 1,
        "zero_as_missing": True,
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    }
    evals_result = {}
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    gbm = lgb.train(
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        params, lgb_train, num_boost_round=1, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
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    )
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    pred = gbm.predict(X_train)
    np.testing.assert_allclose(pred, y)
    ret = roc_auc_score(y_train, pred)
    assert ret > 0.999
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    assert evals_result["valid_0"]["auc"][-1] == pytest.approx(ret)
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def test_missing_value_handle_none():
    x = [0, 1, 2, 3, 4, 5, 6, 7, np.nan]
    y = [0, 1, 1, 1, 0, 0, 0, 0, 0]

    X_train = np.array(x).reshape(len(x), 1)
    y_train = np.array(y)
    lgb_train = lgb.Dataset(X_train, y_train)
    lgb_eval = lgb.Dataset(X_train, y_train)

    params = {
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        "objective": "regression",
        "metric": "auc",
        "verbose": -1,
        "boost_from_average": False,
        "min_data": 1,
        "num_leaves": 2,
        "learning_rate": 1,
        "min_data_in_bin": 1,
        "use_missing": False,
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    }
    evals_result = {}
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    gbm = lgb.train(
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        params, lgb_train, num_boost_round=1, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
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    )
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    pred = gbm.predict(X_train)
    assert pred[0] == pytest.approx(pred[1])
    assert pred[-1] == pytest.approx(pred[0])
    ret = roc_auc_score(y_train, pred)
    assert ret > 0.83
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    assert evals_result["valid_0"]["auc"][-1] == pytest.approx(ret)
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@pytest.mark.parametrize(
    "use_quantized_grad",
    [
        pytest.param(
            True,
            marks=pytest.mark.skipif(
                getenv("TASK", "") == "cuda",
                reason="Skip because quantized training with categorical features is not supported for cuda version",
            ),
        ),
        False,
    ],
)
def test_categorical_handle(use_quantized_grad):
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    x = [0, 1, 2, 3, 4, 5, 6, 7]
    y = [0, 1, 0, 1, 0, 1, 0, 1]

    X_train = np.array(x).reshape(len(x), 1)
    y_train = np.array(y)
    lgb_train = lgb.Dataset(X_train, y_train)
    lgb_eval = lgb.Dataset(X_train, y_train)

    params = {
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        "objective": "regression",
        "metric": "auc",
        "verbose": -1,
        "boost_from_average": False,
        "min_data": 1,
        "num_leaves": 2,
        "learning_rate": 1,
        "min_data_in_bin": 1,
        "min_data_per_group": 1,
        "cat_smooth": 1,
        "cat_l2": 0,
        "max_cat_to_onehot": 1,
        "zero_as_missing": True,
        "categorical_column": 0,
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        "use_quantized_grad": use_quantized_grad,
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    }
    evals_result = {}
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    gbm = lgb.train(
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        params, lgb_train, num_boost_round=1, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
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    )
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    pred = gbm.predict(X_train)
    np.testing.assert_allclose(pred, y)
    ret = roc_auc_score(y_train, pred)
    assert ret > 0.999
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    assert evals_result["valid_0"]["auc"][-1] == pytest.approx(ret)
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@pytest.mark.parametrize(
    "use_quantized_grad",
    [
        pytest.param(
            True,
            marks=pytest.mark.skipif(
                getenv("TASK", "") == "cuda",
                reason="Skip because quantized training with categorical features is not supported for cuda version",
            ),
        ),
        False,
    ],
)
def test_categorical_handle_na(use_quantized_grad):
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    x = [0, np.nan, 0, np.nan, 0, np.nan]
    y = [0, 1, 0, 1, 0, 1]

    X_train = np.array(x).reshape(len(x), 1)
    y_train = np.array(y)
    lgb_train = lgb.Dataset(X_train, y_train)
    lgb_eval = lgb.Dataset(X_train, y_train)

    params = {
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        "objective": "regression",
        "metric": "auc",
        "verbose": -1,
        "boost_from_average": False,
        "min_data": 1,
        "num_leaves": 2,
        "learning_rate": 1,
        "min_data_in_bin": 1,
        "min_data_per_group": 1,
        "cat_smooth": 1,
        "cat_l2": 0,
        "max_cat_to_onehot": 1,
        "zero_as_missing": False,
        "categorical_column": 0,
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        "use_quantized_grad": use_quantized_grad,
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    }
    evals_result = {}
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    gbm = lgb.train(
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        params, lgb_train, num_boost_round=1, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
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    )
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    pred = gbm.predict(X_train)
    np.testing.assert_allclose(pred, y)
    ret = roc_auc_score(y_train, pred)
    assert ret > 0.999
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    assert evals_result["valid_0"]["auc"][-1] == pytest.approx(ret)
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@pytest.mark.parametrize(
    "use_quantized_grad",
    [
        pytest.param(
            True,
            marks=pytest.mark.skipif(
                getenv("TASK", "") == "cuda",
                reason="Skip because quantized training with categorical features is not supported for cuda version",
            ),
        ),
        False,
    ],
)
def test_categorical_non_zero_inputs(use_quantized_grad):
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    x = [1, 1, 1, 1, 1, 1, 2, 2]
    y = [1, 1, 1, 1, 1, 1, 0, 0]

    X_train = np.array(x).reshape(len(x), 1)
    y_train = np.array(y)
    lgb_train = lgb.Dataset(X_train, y_train)
    lgb_eval = lgb.Dataset(X_train, y_train)

    params = {
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        "objective": "regression",
        "metric": "auc",
        "verbose": -1,
        "boost_from_average": False,
        "min_data": 1,
        "num_leaves": 2,
        "learning_rate": 1,
        "min_data_in_bin": 1,
        "min_data_per_group": 1,
        "cat_smooth": 1,
        "cat_l2": 0,
        "max_cat_to_onehot": 1,
        "zero_as_missing": False,
        "categorical_column": 0,
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        "use_quantized_grad": use_quantized_grad,
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    }
    evals_result = {}
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    gbm = lgb.train(
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        params, lgb_train, num_boost_round=1, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
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    )
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    pred = gbm.predict(X_train)
    np.testing.assert_allclose(pred, y)
    ret = roc_auc_score(y_train, pred)
    assert ret > 0.999
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    assert evals_result["valid_0"]["auc"][-1] == pytest.approx(ret)
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def test_multiclass():
    X, y = load_digits(n_class=10, return_X_y=True)
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
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    params = {"objective": "multiclass", "metric": "multi_logloss", "num_class": 10, "verbose": -1}
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    lgb_train = lgb.Dataset(X_train, y_train, params=params)
    lgb_eval = lgb.Dataset(X_test, y_test, reference=lgb_train, params=params)
    evals_result = {}
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    gbm = lgb.train(
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        params, lgb_train, num_boost_round=50, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
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    )
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    ret = multi_logloss(y_test, gbm.predict(X_test))
    assert ret < 0.16
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    assert evals_result["valid_0"]["multi_logloss"][-1] == pytest.approx(ret)
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def test_multiclass_rf():
    X, y = load_digits(n_class=10, return_X_y=True)
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
    params = {
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        "boosting_type": "rf",
        "objective": "multiclass",
        "metric": "multi_logloss",
        "bagging_freq": 1,
        "bagging_fraction": 0.6,
        "feature_fraction": 0.6,
        "num_class": 10,
        "num_leaves": 50,
        "min_data": 1,
        "verbose": -1,
        "gpu_use_dp": True,
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    }
    lgb_train = lgb.Dataset(X_train, y_train, params=params)
    lgb_eval = lgb.Dataset(X_test, y_test, reference=lgb_train, params=params)
    evals_result = {}
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    gbm = lgb.train(
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        params, lgb_train, num_boost_round=50, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
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    )
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    ret = multi_logloss(y_test, gbm.predict(X_test))
    assert ret < 0.23
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    assert evals_result["valid_0"]["multi_logloss"][-1] == pytest.approx(ret)
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def test_multiclass_prediction_early_stopping():
    X, y = load_digits(n_class=10, return_X_y=True)
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
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    params = {"objective": "multiclass", "metric": "multi_logloss", "num_class": 10, "verbose": -1}
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    lgb_train = lgb.Dataset(X_train, y_train, params=params)
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    gbm = lgb.train(params, lgb_train, num_boost_round=50)
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    pred_parameter = {"pred_early_stop": True, "pred_early_stop_freq": 5, "pred_early_stop_margin": 1.5}
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    ret = multi_logloss(y_test, gbm.predict(X_test, **pred_parameter))
    assert ret < 0.8
    assert ret > 0.6  # loss will be higher than when evaluating the full model

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    pred_parameter["pred_early_stop_margin"] = 5.5
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    ret = multi_logloss(y_test, gbm.predict(X_test, **pred_parameter))
    assert ret < 0.2


def test_multi_class_error():
    X, y = load_digits(n_class=10, return_X_y=True)
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    params = {"objective": "multiclass", "num_classes": 10, "metric": "multi_error", "num_leaves": 4, "verbose": -1}
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    lgb_data = lgb.Dataset(X, label=y)
    est = lgb.train(params, lgb_data, num_boost_round=10)
    predict_default = est.predict(X)
    results = {}
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    est = lgb.train(
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        dict(params, multi_error_top_k=1),
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        lgb_data,
        num_boost_round=10,
        valid_sets=[lgb_data],
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        callbacks=[lgb.record_evaluation(results)],
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    )
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    predict_1 = est.predict(X)
    # check that default gives same result as k = 1
    np.testing.assert_allclose(predict_1, predict_default)
    # check against independent calculation for k = 1
    err = top_k_error(y, predict_1, 1)
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    assert results["training"]["multi_error"][-1] == pytest.approx(err)
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    # check against independent calculation for k = 2
    results = {}
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    est = lgb.train(
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        dict(params, multi_error_top_k=2),
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        lgb_data,
        num_boost_round=10,
        valid_sets=[lgb_data],
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        callbacks=[lgb.record_evaluation(results)],
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    )
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    predict_2 = est.predict(X)
    err = top_k_error(y, predict_2, 2)
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    assert results["training"]["multi_error@2"][-1] == pytest.approx(err)
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    # check against independent calculation for k = 10
    results = {}
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    est = lgb.train(
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        dict(params, multi_error_top_k=10),
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        lgb_data,
        num_boost_round=10,
        valid_sets=[lgb_data],
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        callbacks=[lgb.record_evaluation(results)],
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    )
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    predict_3 = est.predict(X)
    err = top_k_error(y, predict_3, 10)
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    assert results["training"]["multi_error@10"][-1] == pytest.approx(err)
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    # check cases where predictions are equal
    X = np.array([[0, 0], [0, 0]])
    y = np.array([0, 1])
    lgb_data = lgb.Dataset(X, label=y)
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    params["num_classes"] = 2
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    results = {}
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    lgb.train(params, lgb_data, num_boost_round=10, valid_sets=[lgb_data], callbacks=[lgb.record_evaluation(results)])
    assert results["training"]["multi_error"][-1] == pytest.approx(1)
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    results = {}
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    lgb.train(
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        dict(params, multi_error_top_k=2),
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        lgb_data,
        num_boost_round=10,
        valid_sets=[lgb_data],
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        callbacks=[lgb.record_evaluation(results)],
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    )
549
    assert results["training"]["multi_error@2"][-1] == pytest.approx(0)
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@pytest.mark.skipif(
    getenv("TASK", "") == "cuda", reason="Skip due to differences in implementation details of CUDA version"
)
555
def test_auc_mu(rng):
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    # should give same result as binary auc for 2 classes
    X, y = load_digits(n_class=10, return_X_y=True)
    y_new = np.zeros((len(y)))
    y_new[y != 0] = 1
    lgb_X = lgb.Dataset(X, label=y_new)
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    params = {"objective": "multiclass", "metric": "auc_mu", "verbose": -1, "num_classes": 2, "seed": 0}
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    results_auc_mu = {}
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    lgb.train(params, lgb_X, num_boost_round=10, valid_sets=[lgb_X], callbacks=[lgb.record_evaluation(results_auc_mu)])
    params = {"objective": "binary", "metric": "auc", "verbose": -1, "seed": 0}
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    results_auc = {}
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    lgb.train(params, lgb_X, num_boost_round=10, valid_sets=[lgb_X], callbacks=[lgb.record_evaluation(results_auc)])
    np.testing.assert_allclose(results_auc_mu["training"]["auc_mu"], results_auc["training"]["auc"])
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    # test the case where all predictions are equal
    lgb_X = lgb.Dataset(X[:10], label=y_new[:10])
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    params = {
        "objective": "multiclass",
        "metric": "auc_mu",
        "verbose": -1,
        "num_classes": 2,
        "min_data_in_leaf": 20,
        "seed": 0,
    }
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    results_auc_mu = {}
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    lgb.train(params, lgb_X, num_boost_round=10, valid_sets=[lgb_X], callbacks=[lgb.record_evaluation(results_auc_mu)])
    assert results_auc_mu["training"]["auc_mu"][-1] == pytest.approx(0.5)
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    # test that weighted data gives different auc_mu
    lgb_X = lgb.Dataset(X, label=y)
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    lgb_X_weighted = lgb.Dataset(X, label=y, weight=np.abs(rng.standard_normal(size=y.shape)))
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    results_unweighted = {}
    results_weighted = {}
    params = dict(params, num_classes=10, num_leaves=5)
587
    lgb.train(
588
        params, lgb_X, num_boost_round=10, valid_sets=[lgb_X], callbacks=[lgb.record_evaluation(results_unweighted)]
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    )
    lgb.train(
        params,
        lgb_X_weighted,
        num_boost_round=10,
        valid_sets=[lgb_X_weighted],
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        callbacks=[lgb.record_evaluation(results_weighted)],
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    )
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    assert results_weighted["training"]["auc_mu"][-1] < 1
    assert results_unweighted["training"]["auc_mu"][-1] != results_weighted["training"]["auc_mu"][-1]
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    # test that equal data weights give same auc_mu as unweighted data
    lgb_X_weighted = lgb.Dataset(X, label=y, weight=np.ones(y.shape) * 0.5)
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    lgb.train(
        params,
        lgb_X_weighted,
        num_boost_round=10,
        valid_sets=[lgb_X_weighted],
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        callbacks=[lgb.record_evaluation(results_weighted)],
    )
    assert results_unweighted["training"]["auc_mu"][-1] == pytest.approx(
        results_weighted["training"]["auc_mu"][-1], abs=1e-5
610
    )
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    # should give 1 when accuracy = 1
    X = X[:10, :]
    y = y[:10]
    lgb_X = lgb.Dataset(X, label=y)
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    params = {"objective": "multiclass", "metric": "auc_mu", "num_classes": 10, "min_data_in_leaf": 1, "verbose": -1}
616
    results = {}
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    lgb.train(params, lgb_X, num_boost_round=100, valid_sets=[lgb_X], callbacks=[lgb.record_evaluation(results)])
    assert results["training"]["auc_mu"][-1] == pytest.approx(1)
619
    # test loading class weights
620
    Xy = np.loadtxt(
621
        str(Path(__file__).absolute().parents[2] / "examples" / "multiclass_classification" / "multiclass.train")
622
    )
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    y = Xy[:, 0]
    X = Xy[:, 1:]
    lgb_X = lgb.Dataset(X, label=y)
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    params = {
        "objective": "multiclass",
        "metric": "auc_mu",
        "auc_mu_weights": [0, 2, 2, 2, 2, 1, 0, 1, 1, 1, 1, 1, 0, 1, 1, 1, 1, 1, 0, 1, 1, 1, 1, 1, 0],
        "num_classes": 5,
        "verbose": -1,
        "seed": 0,
    }
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    results_weight = {}
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    lgb.train(params, lgb_X, num_boost_round=5, valid_sets=[lgb_X], callbacks=[lgb.record_evaluation(results_weight)])
    params["auc_mu_weights"] = []
637
    results_no_weight = {}
638
    lgb.train(
639
        params, lgb_X, num_boost_round=5, valid_sets=[lgb_X], callbacks=[lgb.record_evaluation(results_no_weight)]
640
    )
641
    assert results_weight["training"]["auc_mu"][-1] != results_no_weight["training"]["auc_mu"][-1]
642
643


644
def test_ranking_prediction_early_stopping():
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    rank_example_dir = Path(__file__).absolute().parents[2] / "examples" / "lambdarank"
    X_train, y_train = load_svmlight_file(str(rank_example_dir / "rank.train"))
    q_train = np.loadtxt(str(rank_example_dir / "rank.train.query"))
    X_test, _ = load_svmlight_file(str(rank_example_dir / "rank.test"))
    params = {"objective": "rank_xendcg", "verbose": -1}
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    lgb_train = lgb.Dataset(X_train, y_train, group=q_train, params=params)
    gbm = lgb.train(params, lgb_train, num_boost_round=50)

653
    pred_parameter = {"pred_early_stop": True, "pred_early_stop_freq": 5, "pred_early_stop_margin": 1.5}
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    ret_early = gbm.predict(X_test, **pred_parameter)

    pred_parameter["pred_early_stop_margin"] = 5.5
    ret_early_more_strict = gbm.predict(X_test, **pred_parameter)
    with pytest.raises(AssertionError):
        np.testing.assert_allclose(ret_early, ret_early_more_strict)


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# Simulates position bias for a given ranking dataset.
# The ouput dataset is identical to the input one with the exception for the relevance labels.
# The new labels are generated according to an instance of a cascade user model:
# for each query, the user is simulated to be traversing the list of documents ranked by a baseline ranker
# (in our example it is simply the ordering by some feature correlated with relevance, e.g., 34)
# and clicks on that document (new_label=1) with some probability 'pclick' depending on its true relevance;
# at each position the user may stop the traversal with some probability pstop. For the non-clicked documents,
669
# new_label=0. Thus the generated new labels are biased towards the baseline ranker.
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# The positions of the documents in the ranked lists produced by the baseline, are returned.
def simulate_position_bias(file_dataset_in, file_query_in, file_dataset_out, baseline_feature):
    # a mapping of a document's true relevance (defined on a 5-grade scale) into the probability of clicking it
    def get_pclick(label):
        if label == 0:
            return 0.4
        elif label == 1:
            return 0.6
        elif label == 2:
            return 0.7
        elif label == 3:
            return 0.8
        else:
            return 0.9
684

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    # an instantiation of a cascade model where the user stops with probability 0.2 after observing each document
    pstop = 0.2
687

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    f_dataset_in = open(file_dataset_in, "r")
    f_dataset_out = open(file_dataset_out, "w")
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    random.seed(10)
    positions_all = []
    for line in open(file_query_in):
693
        docs_num = int(line)
694
        lines = []
695
        index_values = []
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        positions = [0] * docs_num
        for index in range(docs_num):
            features = f_dataset_in.readline().split()
            lines.append(features)
            val = 0.0
            for feature_val in features:
702
                feature_val_split = feature_val.split(":")
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                if int(feature_val_split[0]) == baseline_feature:
                    val = float(feature_val_split[1])
            index_values.append([index, val])
        index_values.sort(key=lambda x: -x[1])
707
        stop = False
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        for pos in range(docs_num):
            index = index_values[pos][0]
            new_label = 0
            if not stop:
                label = int(lines[index][0])
                pclick = get_pclick(label)
                if random.random() < pclick:
715
                    new_label = 1
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                stop = random.random() < pstop
            lines[index][0] = str(new_label)
            positions[index] = pos
        for features in lines:
720
            f_dataset_out.write(" ".join(features) + "\n")
721
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        positions_all.extend(positions)
    f_dataset_out.close()
    return positions_all


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@pytest.mark.skipif(
    getenv("TASK", "") == "cuda", reason="Positions in learning to rank is not supported in CUDA version yet"
)
729
def test_ranking_with_position_information_with_file(tmp_path):
730
    rank_example_dir = Path(__file__).absolute().parents[2] / "examples" / "lambdarank"
731
    params = {
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        "objective": "lambdarank",
        "verbose": -1,
        "eval_at": [3],
        "metric": "ndcg",
        "bagging_freq": 1,
        "bagging_fraction": 0.9,
        "min_data_in_leaf": 50,
        "min_sum_hessian_in_leaf": 5.0,
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742
    }

    # simulate position bias for the train dataset and put the train dataset with biased labels to temp directory
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    positions = simulate_position_bias(
        str(rank_example_dir / "rank.train"),
        str(rank_example_dir / "rank.train.query"),
        str(tmp_path / "rank.train"),
        baseline_feature=34,
    )
    copyfile(str(rank_example_dir / "rank.train.query"), str(tmp_path / "rank.train.query"))
    copyfile(str(rank_example_dir / "rank.test"), str(tmp_path / "rank.test"))
    copyfile(str(rank_example_dir / "rank.test.query"), str(tmp_path / "rank.test.query"))
752

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    lgb_train = lgb.Dataset(str(tmp_path / "rank.train"), params=params)
    lgb_valid = [lgb_train.create_valid(str(tmp_path / "rank.test"))]
    gbm_baseline = lgb.train(params, lgb_train, valid_sets=lgb_valid, num_boost_round=50)
756

757
    f_positions_out = open(str(tmp_path / "rank.train.position"), "w")
758
    for pos in positions:
759
        f_positions_out.write(str(pos) + "\n")
760
761
    f_positions_out.close()

762
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764
    lgb_train = lgb.Dataset(str(tmp_path / "rank.train"), params=params)
    lgb_valid = [lgb_train.create_valid(str(tmp_path / "rank.test"))]
    gbm_unbiased_with_file = lgb.train(params, lgb_train, valid_sets=lgb_valid, num_boost_round=50)
765

766
    # the performance of the unbiased LambdaMART should outperform the plain LambdaMART on the dataset with position bias
767
    assert gbm_baseline.best_score["valid_0"]["ndcg@3"] + 0.03 <= gbm_unbiased_with_file.best_score["valid_0"]["ndcg@3"]
768
769

    # add extra row to position file
770
771
    with open(str(tmp_path / "rank.train.position"), "a") as file:
        file.write("pos_1000\n")
772
        file.close()
773
774
    lgb_train = lgb.Dataset(str(tmp_path / "rank.train"), params=params)
    lgb_valid = [lgb_train.create_valid(str(tmp_path / "rank.test"))]
775
    with pytest.raises(lgb.basic.LightGBMError, match=r"Positions size \(3006\) doesn't match data size"):
776
        lgb.train(params, lgb_train, valid_sets=lgb_valid, num_boost_round=50)
777
778


779
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781
@pytest.mark.skipif(
    getenv("TASK", "") == "cuda", reason="Positions in learning to rank is not supported in CUDA version yet"
)
782
def test_ranking_with_position_information_with_dataset_constructor(tmp_path):
783
    rank_example_dir = Path(__file__).absolute().parents[2] / "examples" / "lambdarank"
784
    params = {
785
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789
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794
795
        "objective": "lambdarank",
        "verbose": -1,
        "eval_at": [3],
        "metric": "ndcg",
        "bagging_freq": 1,
        "bagging_fraction": 0.9,
        "min_data_in_leaf": 50,
        "min_sum_hessian_in_leaf": 5.0,
        "num_threads": 1,
        "deterministic": True,
        "seed": 0,
796
797
798
    }

    # simulate position bias for the train dataset and put the train dataset with biased labels to temp directory
799
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802
803
804
805
806
807
    positions = simulate_position_bias(
        str(rank_example_dir / "rank.train"),
        str(rank_example_dir / "rank.train.query"),
        str(tmp_path / "rank.train"),
        baseline_feature=34,
    )
    copyfile(str(rank_example_dir / "rank.train.query"), str(tmp_path / "rank.train.query"))
    copyfile(str(rank_example_dir / "rank.test"), str(tmp_path / "rank.test"))
    copyfile(str(rank_example_dir / "rank.test.query"), str(tmp_path / "rank.test.query"))
808

809
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811
    lgb_train = lgb.Dataset(str(tmp_path / "rank.train"), params=params)
    lgb_valid = [lgb_train.create_valid(str(tmp_path / "rank.test"))]
    gbm_baseline = lgb.train(params, lgb_train, valid_sets=lgb_valid, num_boost_round=50)
812
813
814
815

    positions = np.array(positions)

    # test setting positions through Dataset constructor with numpy array
816
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818
    lgb_train = lgb.Dataset(str(tmp_path / "rank.train"), params=params, position=positions)
    lgb_valid = [lgb_train.create_valid(str(tmp_path / "rank.test"))]
    gbm_unbiased = lgb.train(params, lgb_train, valid_sets=lgb_valid, num_boost_round=50)
819
820

    # the performance of the unbiased LambdaMART should outperform the plain LambdaMART on the dataset with position bias
821
    assert gbm_baseline.best_score["valid_0"]["ndcg@3"] + 0.03 <= gbm_unbiased.best_score["valid_0"]["ndcg@3"]
822
823
824

    if PANDAS_INSTALLED:
        # test setting positions through Dataset constructor with pandas Series
825
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827
828
829
830
        lgb_train = lgb.Dataset(str(tmp_path / "rank.train"), params=params, position=pd_Series(positions))
        lgb_valid = [lgb_train.create_valid(str(tmp_path / "rank.test"))]
        gbm_unbiased_pandas_series = lgb.train(params, lgb_train, valid_sets=lgb_valid, num_boost_round=50)
        assert (
            gbm_unbiased.best_score["valid_0"]["ndcg@3"] == gbm_unbiased_pandas_series.best_score["valid_0"]["ndcg@3"]
        )
831
832

    # test setting positions through set_position
833
834
    lgb_train = lgb.Dataset(str(tmp_path / "rank.train"), params=params)
    lgb_valid = [lgb_train.create_valid(str(tmp_path / "rank.test"))]
835
    lgb_train.set_position(positions)
836
837
    gbm_unbiased_set_position = lgb.train(params, lgb_train, valid_sets=lgb_valid, num_boost_round=50)
    assert gbm_unbiased.best_score["valid_0"]["ndcg@3"] == gbm_unbiased_set_position.best_score["valid_0"]["ndcg@3"]
838
839
840
841
842
843

    # test get_position works
    positions_from_get = lgb_train.get_position()
    np.testing.assert_array_equal(positions_from_get, positions)


844
845
def test_early_stopping():
    X, y = load_breast_cancer(return_X_y=True)
846
    params = {"objective": "binary", "metric": "binary_logloss", "verbose": -1}
847
848
849
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
    lgb_train = lgb.Dataset(X_train, y_train)
    lgb_eval = lgb.Dataset(X_test, y_test, reference=lgb_train)
850
    valid_set_name = "valid_set"
851
    # no early stopping
852
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854
855
856
857
858
859
    gbm = lgb.train(
        params,
        lgb_train,
        num_boost_round=10,
        valid_sets=lgb_eval,
        valid_names=valid_set_name,
        callbacks=[lgb.early_stopping(stopping_rounds=5)],
    )
860
861
    assert gbm.best_iteration == 10
    assert valid_set_name in gbm.best_score
862
    assert "binary_logloss" in gbm.best_score[valid_set_name]
863
    # early stopping occurs
864
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866
867
868
869
870
871
    gbm = lgb.train(
        params,
        lgb_train,
        num_boost_round=40,
        valid_sets=lgb_eval,
        valid_names=valid_set_name,
        callbacks=[lgb.early_stopping(stopping_rounds=5)],
    )
872
873
    assert gbm.best_iteration <= 39
    assert valid_set_name in gbm.best_score
874
    assert "binary_logloss" in gbm.best_score[valid_set_name]
875
876


877
@pytest.mark.parametrize("use_valid", [True, False])
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885
886
def test_early_stopping_ignores_training_set(use_valid):
    x = np.linspace(-1, 1, 100)
    X = x.reshape(-1, 1)
    y = x**2
    X_train, X_valid = X[:80], X[80:]
    y_train, y_valid = y[:80], y[80:]
    train_ds = lgb.Dataset(X_train, y_train)
    valid_ds = lgb.Dataset(X_valid, y_valid)
    valid_sets = [train_ds]
887
    valid_names = ["train"]
888
889
    if use_valid:
        valid_sets.append(valid_ds)
890
        valid_names.append("valid")
891
892
893
894
    eval_result = {}

    def train_fn():
        return lgb.train(
895
            {"num_leaves": 5},
896
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898
899
            train_ds,
            num_boost_round=2,
            valid_sets=valid_sets,
            valid_names=valid_names,
900
            callbacks=[lgb.early_stopping(1), lgb.record_evaluation(eval_result)],
901
        )
902

903
904
905
    if use_valid:
        bst = train_fn()
        assert bst.best_iteration == 1
906
907
        assert eval_result["train"]["l2"][1] < eval_result["train"]["l2"][0]  # train improved
        assert eval_result["valid"]["l2"][1] > eval_result["valid"]["l2"][0]  # valid didn't
908
    else:
909
        with pytest.warns(UserWarning, match="Only training set found, disabling early stopping."):
910
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912
913
914
            bst = train_fn()
        assert bst.current_iteration() == 2
        assert bst.best_iteration == 0


915
@pytest.mark.parametrize("first_metric_only", [True, False])
916
917
918
919
def test_early_stopping_via_global_params(first_metric_only):
    X, y = load_breast_cancer(return_X_y=True)
    num_trees = 5
    params = {
920
921
922
923
924
925
        "num_trees": num_trees,
        "objective": "binary",
        "metric": "None",
        "verbose": -1,
        "early_stopping_round": 2,
        "first_metric_only": first_metric_only,
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    }
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
    lgb_train = lgb.Dataset(X_train, y_train)
    lgb_eval = lgb.Dataset(X_test, y_test, reference=lgb_train)
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    valid_set_name = "valid_set"
    gbm = lgb.train(
        params, lgb_train, feval=[decreasing_metric, constant_metric], valid_sets=lgb_eval, valid_names=valid_set_name
    )
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    if first_metric_only:
        assert gbm.best_iteration == num_trees
    else:
        assert gbm.best_iteration == 1
    assert valid_set_name in gbm.best_score
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    assert "decreasing_metric" in gbm.best_score[valid_set_name]
    assert "error" in gbm.best_score[valid_set_name]
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@pytest.mark.parametrize("early_stopping_round", [-10, -1, 0, None, "None"])
def test_early_stopping_is_not_enabled_for_non_positive_stopping_rounds(early_stopping_round):
    X, y = load_breast_cancer(return_X_y=True)
    num_trees = 5
    params = {
        "num_trees": num_trees,
        "objective": "binary",
        "metric": "None",
        "verbose": -1,
        "early_stopping_round": early_stopping_round,
        "first_metric_only": True,
    }
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
    lgb_train = lgb.Dataset(X_train, y_train)
    lgb_eval = lgb.Dataset(X_test, y_test, reference=lgb_train)
    valid_set_name = "valid_set"

    if early_stopping_round is None:
        gbm = lgb.train(
            params,
            lgb_train,
            feval=[constant_metric],
            valid_sets=lgb_eval,
            valid_names=valid_set_name,
        )
        assert "early_stopping_round" not in gbm.params
        assert gbm.num_trees() == num_trees
    elif early_stopping_round == "None":
        with pytest.raises(TypeError, match="early_stopping_round should be an integer. Got 'str'"):
            gbm = lgb.train(
                params,
                lgb_train,
                feval=[constant_metric],
                valid_sets=lgb_eval,
                valid_names=valid_set_name,
            )
    elif early_stopping_round <= 0:
        gbm = lgb.train(
            params,
            lgb_train,
            feval=[constant_metric],
            valid_sets=lgb_eval,
            valid_names=valid_set_name,
        )
        assert gbm.params["early_stopping_round"] == early_stopping_round
        assert gbm.num_trees() == num_trees


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@pytest.mark.parametrize("first_only", [True, False])
@pytest.mark.parametrize("single_metric", [True, False])
@pytest.mark.parametrize("greater_is_better", [True, False])
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def test_early_stopping_min_delta(first_only, single_metric, greater_is_better):
    if single_metric and not first_only:
        pytest.skip("first_metric_only doesn't affect single metric.")
    metric2min_delta = {
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        "auc": 0.001,
        "binary_logloss": 0.01,
        "average_precision": 0.001,
        "mape": 0.01,
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    }
    if single_metric:
        if greater_is_better:
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            metric = "auc"
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        else:
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            metric = "binary_logloss"
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    else:
        if first_only:
            if greater_is_better:
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                metric = ["auc", "binary_logloss"]
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            else:
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                metric = ["binary_logloss", "auc"]
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        else:
            if greater_is_better:
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                metric = ["auc", "average_precision"]
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            else:
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                metric = ["binary_logloss", "mape"]
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    X, y = load_breast_cancer(return_X_y=True)
    X_train, X_valid, y_train, y_valid = train_test_split(X, y, test_size=0.2, random_state=0)
    train_ds = lgb.Dataset(X_train, y_train)
    valid_ds = lgb.Dataset(X_valid, y_valid, reference=train_ds)

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    params = {"objective": "binary", "metric": metric, "verbose": -1}
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    if isinstance(metric, str):
        min_delta = metric2min_delta[metric]
    elif first_only:
        min_delta = metric2min_delta[metric[0]]
    else:
        min_delta = [metric2min_delta[m] for m in metric]
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    train_kwargs = {
        "params": params,
        "train_set": train_ds,
        "num_boost_round": 50,
        "valid_sets": [train_ds, valid_ds],
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        "valid_names": ["training", "valid"],
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    }
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    # regular early stopping
    evals_result = {}
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    train_kwargs["callbacks"] = [
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        lgb.callback.early_stopping(10, first_only, verbose=False),
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        lgb.record_evaluation(evals_result),
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    ]
    bst = lgb.train(**train_kwargs)
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    scores = np.vstack(list(evals_result["valid"].values())).T
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    # positive min_delta
    delta_result = {}
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    train_kwargs["callbacks"] = [
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        lgb.callback.early_stopping(10, first_only, verbose=False, min_delta=min_delta),
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        lgb.record_evaluation(delta_result),
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    ]
    delta_bst = lgb.train(**train_kwargs)
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    delta_scores = np.vstack(list(delta_result["valid"].values())).T
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    if first_only:
        scores = scores[:, 0]
        delta_scores = delta_scores[:, 0]

    assert delta_bst.num_trees() < bst.num_trees()
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    np.testing.assert_allclose(scores[: len(delta_scores)], delta_scores)
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    last_score = delta_scores[-1]
    best_score = delta_scores[delta_bst.num_trees() - 1]
    if greater_is_better:
        assert np.less_equal(last_score, best_score + min_delta).any()
    else:
        assert np.greater_equal(last_score, best_score - min_delta).any()


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@pytest.mark.parametrize("early_stopping_min_delta", [1e3, 0.0])
def test_early_stopping_min_delta_via_global_params(early_stopping_min_delta):
    X, y = load_breast_cancer(return_X_y=True)
    num_trees = 5
    params = {
        "num_trees": num_trees,
        "num_leaves": 5,
        "objective": "binary",
        "metric": "None",
        "verbose": -1,
        "early_stopping_round": 2,
        "early_stopping_min_delta": early_stopping_min_delta,
    }
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
    lgb_train = lgb.Dataset(X_train, y_train)
    lgb_eval = lgb.Dataset(X_test, y_test, reference=lgb_train)
    gbm = lgb.train(params, lgb_train, feval=decreasing_metric, valid_sets=lgb_eval)
    if early_stopping_min_delta == 0:
        assert gbm.best_iteration == num_trees
    else:
        assert gbm.best_iteration == 1


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def test_early_stopping_can_be_triggered_via_custom_callback():
    X, y = make_synthetic_regression()

    def _early_stop_after_seventh_iteration(env):
        if env.iteration == 6:
            exc = lgb.EarlyStopException(
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                best_iteration=6, best_score=[("some_validation_set", "some_metric", 0.708, True)]
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            )
            raise exc

    bst = lgb.train(
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        params={"objective": "regression", "verbose": -1, "num_leaves": 2},
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        train_set=lgb.Dataset(X, label=y),
        num_boost_round=23,
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        callbacks=[_early_stop_after_seventh_iteration],
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    )
    assert bst.num_trees() == 7
    assert bst.best_score["some_validation_set"]["some_metric"] == 0.708
    assert bst.best_iteration == 7
    assert bst.current_iteration() == 7


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def test_continue_train(tmp_path):
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    X, y = make_synthetic_regression()
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    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
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    params = {"objective": "regression", "metric": "l1", "verbose": -1}
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    lgb_train = lgb.Dataset(X_train, y_train, free_raw_data=False)
    lgb_eval = lgb.Dataset(X_test, y_test, reference=lgb_train, free_raw_data=False)
    init_gbm = lgb.train(params, lgb_train, num_boost_round=20)
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    model_path = tmp_path / "model.txt"
    init_gbm.save_model(model_path)
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    evals_result = {}
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    gbm = lgb.train(
        params,
        lgb_train,
        num_boost_round=30,
        valid_sets=lgb_eval,
        # test custom eval metrics
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        feval=(lambda p, d: ("custom_mae", mean_absolute_error(p, d.get_label()), False)),
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        callbacks=[lgb.record_evaluation(evals_result)],
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        init_model=model_path,
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    )
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    ret = mean_absolute_error(y_test, gbm.predict(X_test))
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    assert ret < 13.6
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    assert evals_result["valid_0"]["l1"][-1] == pytest.approx(ret)
    np.testing.assert_allclose(evals_result["valid_0"]["l1"], evals_result["valid_0"]["custom_mae"])
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def test_continue_train_reused_dataset():
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    X, y = make_synthetic_regression()
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    params = {"objective": "regression", "verbose": -1}
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    lgb_train = lgb.Dataset(X, y, free_raw_data=False)
    init_gbm = lgb.train(params, lgb_train, num_boost_round=5)
    init_gbm_2 = lgb.train(params, lgb_train, num_boost_round=5, init_model=init_gbm)
    init_gbm_3 = lgb.train(params, lgb_train, num_boost_round=5, init_model=init_gbm_2)
    gbm = lgb.train(params, lgb_train, num_boost_round=5, init_model=init_gbm_3)
    assert gbm.current_iteration() == 20


def test_continue_train_dart():
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    X, y = make_synthetic_regression()
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    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
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    params = {"boosting_type": "dart", "objective": "regression", "metric": "l1", "verbose": -1}
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    lgb_train = lgb.Dataset(X_train, y_train, free_raw_data=False)
    lgb_eval = lgb.Dataset(X_test, y_test, reference=lgb_train, free_raw_data=False)
    init_gbm = lgb.train(params, lgb_train, num_boost_round=50)
    evals_result = {}
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    gbm = lgb.train(
        params,
        lgb_train,
        num_boost_round=50,
        valid_sets=lgb_eval,
        callbacks=[lgb.record_evaluation(evals_result)],
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        init_model=init_gbm,
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    )
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    ret = mean_absolute_error(y_test, gbm.predict(X_test))
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    assert ret < 13.6
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    assert evals_result["valid_0"]["l1"][-1] == pytest.approx(ret)
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def test_continue_train_multiclass():
    X, y = load_iris(return_X_y=True)
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
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    params = {"objective": "multiclass", "metric": "multi_logloss", "num_class": 3, "verbose": -1}
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    lgb_train = lgb.Dataset(X_train, y_train, params=params, free_raw_data=False)
    lgb_eval = lgb.Dataset(X_test, y_test, reference=lgb_train, params=params, free_raw_data=False)
    init_gbm = lgb.train(params, lgb_train, num_boost_round=20)
    evals_result = {}
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    gbm = lgb.train(
        params,
        lgb_train,
        num_boost_round=30,
        valid_sets=lgb_eval,
        callbacks=[lgb.record_evaluation(evals_result)],
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        init_model=init_gbm,
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    )
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    ret = multi_logloss(y_test, gbm.predict(X_test))
    assert ret < 0.1
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    assert evals_result["valid_0"]["multi_logloss"][-1] == pytest.approx(ret)
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def test_cv():
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    X_train, y_train = make_synthetic_regression()
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    params = {"verbose": -1}
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    lgb_train = lgb.Dataset(X_train, y_train)
    # shuffle = False, override metric in params
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    params_with_metric = {"metric": "l2", "verbose": -1}
    cv_res = lgb.cv(
        params_with_metric, lgb_train, num_boost_round=10, nfold=3, stratified=False, shuffle=False, metrics="l1"
    )
    assert "valid l1-mean" in cv_res
    assert "valid l2-mean" not in cv_res
    assert len(cv_res["valid l1-mean"]) == 10
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    # shuffle = True, callbacks
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    cv_res = lgb.cv(
        params,
        lgb_train,
        num_boost_round=10,
        nfold=3,
        stratified=False,
        shuffle=True,
        metrics="l1",
        callbacks=[lgb.reset_parameter(learning_rate=lambda i: 0.1 - 0.001 * i)],
    )
    assert "valid l1-mean" in cv_res
    assert len(cv_res["valid l1-mean"]) == 10
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    # enable display training loss
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    cv_res = lgb.cv(
        params_with_metric,
        lgb_train,
        num_boost_round=10,
        nfold=3,
        stratified=False,
        shuffle=False,
        metrics="l1",
        eval_train_metric=True,
    )
    assert "train l1-mean" in cv_res
    assert "valid l1-mean" in cv_res
    assert "train l2-mean" not in cv_res
    assert "valid l2-mean" not in cv_res
    assert len(cv_res["train l1-mean"]) == 10
    assert len(cv_res["valid l1-mean"]) == 10
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    # self defined folds
    tss = TimeSeriesSplit(3)
    folds = tss.split(X_train)
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    cv_res_gen = lgb.cv(params_with_metric, lgb_train, num_boost_round=10, folds=folds)
    cv_res_obj = lgb.cv(params_with_metric, lgb_train, num_boost_round=10, folds=tss)
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    np.testing.assert_allclose(cv_res_gen["valid l2-mean"], cv_res_obj["valid l2-mean"])
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    # LambdaRank
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    rank_example_dir = Path(__file__).absolute().parents[2] / "examples" / "lambdarank"
    X_train, y_train = load_svmlight_file(str(rank_example_dir / "rank.train"))
    q_train = np.loadtxt(str(rank_example_dir / "rank.train.query"))
    params_lambdarank = {"objective": "lambdarank", "verbose": -1, "eval_at": 3}
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    lgb_train = lgb.Dataset(X_train, y_train, group=q_train)
    # ... with l2 metric
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    cv_res_lambda = lgb.cv(params_lambdarank, lgb_train, num_boost_round=10, nfold=3, metrics="l2")
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    assert len(cv_res_lambda) == 2
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    assert not np.isnan(cv_res_lambda["valid l2-mean"]).any()
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    # ... with NDCG (default) metric
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    cv_res_lambda = lgb.cv(params_lambdarank, lgb_train, num_boost_round=10, nfold=3)
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    assert len(cv_res_lambda) == 2
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    assert not np.isnan(cv_res_lambda["valid ndcg@3-mean"]).any()
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    # self defined folds with lambdarank
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    cv_res_lambda_obj = lgb.cv(params_lambdarank, lgb_train, num_boost_round=10, folds=GroupKFold(n_splits=3))
    np.testing.assert_allclose(cv_res_lambda["valid ndcg@3-mean"], cv_res_lambda_obj["valid ndcg@3-mean"])
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def test_cv_works_with_init_model(tmp_path):
    X, y = make_synthetic_regression()
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    params = {"objective": "regression", "verbose": -1}
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    num_train_rounds = 2
    lgb_train = lgb.Dataset(X, y, free_raw_data=False)
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    bst = lgb.train(params=params, train_set=lgb_train, num_boost_round=num_train_rounds)
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    preds_raw = bst.predict(X, raw_score=True)
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    model_path_txt = str(tmp_path / "lgb.model")
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    bst.save_model(model_path_txt)

    num_cv_rounds = 5
    cv_kwargs = {
        "num_boost_round": num_cv_rounds,
        "nfold": 3,
        "stratified": False,
        "shuffle": False,
        "seed": 708,
        "return_cvbooster": True,
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        "params": params,
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    }

    # init_model from an in-memory Booster
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    cv_res = lgb.cv(train_set=lgb_train, init_model=bst, **cv_kwargs)
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    cv_bst_w_in_mem_init_model = cv_res["cvbooster"]
    assert cv_bst_w_in_mem_init_model.current_iteration() == [num_train_rounds + num_cv_rounds] * 3
    for booster in cv_bst_w_in_mem_init_model.boosters:
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        np.testing.assert_allclose(preds_raw, booster.predict(X, raw_score=True, num_iteration=num_train_rounds))
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    # init_model from a text file
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    cv_res = lgb.cv(train_set=lgb_train, init_model=model_path_txt, **cv_kwargs)
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    cv_bst_w_file_init_model = cv_res["cvbooster"]
    assert cv_bst_w_file_init_model.current_iteration() == [num_train_rounds + num_cv_rounds] * 3
    for booster in cv_bst_w_file_init_model.boosters:
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        np.testing.assert_allclose(preds_raw, booster.predict(X, raw_score=True, num_iteration=num_train_rounds))
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    # predictions should be identical
    for i in range(3):
        np.testing.assert_allclose(
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            cv_bst_w_in_mem_init_model.boosters[i].predict(X), cv_bst_w_file_init_model.boosters[i].predict(X)
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        )


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def test_cvbooster():
    X, y = load_breast_cancer(return_X_y=True)
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
    params = {
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        "objective": "binary",
        "metric": "binary_logloss",
        "verbose": -1,
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    }
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    nfold = 3
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    lgb_train = lgb.Dataset(X_train, y_train)
    # with early stopping
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    cv_res = lgb.cv(
        params,
        lgb_train,
        num_boost_round=25,
        nfold=nfold,
        callbacks=[lgb.early_stopping(stopping_rounds=5)],
        return_cvbooster=True,
    )
    assert "cvbooster" in cv_res
    cvb = cv_res["cvbooster"]
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    assert isinstance(cvb, lgb.CVBooster)
    assert isinstance(cvb.boosters, list)
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    assert len(cvb.boosters) == nfold
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    assert all(isinstance(bst, lgb.Booster) for bst in cvb.boosters)
    assert cvb.best_iteration > 0
    # predict by each fold booster
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    preds = cvb.predict(X_test)
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    assert isinstance(preds, list)
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    assert len(preds) == nfold
    # check that each booster predicted using the best iteration
    for fold_preds, bst in zip(preds, cvb.boosters):
        assert bst.best_iteration == cvb.best_iteration
        expected = bst.predict(X_test, num_iteration=cvb.best_iteration)
        np.testing.assert_allclose(fold_preds, expected)
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    # fold averaging
    avg_pred = np.mean(preds, axis=0)
    ret = log_loss(y_test, avg_pred)
    assert ret < 0.13
    # without early stopping
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    cv_res = lgb.cv(params, lgb_train, num_boost_round=20, nfold=3, return_cvbooster=True)
    cvb = cv_res["cvbooster"]
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    assert cvb.best_iteration == -1
    preds = cvb.predict(X_test)
    avg_pred = np.mean(preds, axis=0)
    ret = log_loss(y_test, avg_pred)
    assert ret < 0.15


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def test_cvbooster_save_load(tmp_path):
    X, y = load_breast_cancer(return_X_y=True)
    X_train, X_test, y_train, _ = train_test_split(X, y, test_size=0.1, random_state=42)
    params = {
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        "objective": "binary",
        "metric": "binary_logloss",
        "verbose": -1,
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    }
    nfold = 3
    lgb_train = lgb.Dataset(X_train, y_train)

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    cv_res = lgb.cv(
        params,
        lgb_train,
        num_boost_round=10,
        nfold=nfold,
        callbacks=[lgb.early_stopping(stopping_rounds=5)],
        return_cvbooster=True,
    )
    cvbooster = cv_res["cvbooster"]
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    preds = cvbooster.predict(X_test)
    best_iteration = cvbooster.best_iteration

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    model_path_txt = str(tmp_path / "lgb.model")
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    cvbooster.save_model(model_path_txt)
    model_string = cvbooster.model_to_string()
    del cvbooster

    cvbooster_from_txt_file = lgb.CVBooster(model_file=model_path_txt)
    cvbooster_from_string = lgb.CVBooster().model_from_string(model_string)
    for cvbooster_loaded in [cvbooster_from_txt_file, cvbooster_from_string]:
        assert best_iteration == cvbooster_loaded.best_iteration
        np.testing.assert_array_equal(preds, cvbooster_loaded.predict(X_test))


1390
@pytest.mark.parametrize("serializer", SERIALIZERS)
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def test_cvbooster_picklable(serializer):
    X, y = load_breast_cancer(return_X_y=True)
    X_train, X_test, y_train, _ = train_test_split(X, y, test_size=0.1, random_state=42)
    params = {
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        "objective": "binary",
        "metric": "binary_logloss",
        "verbose": -1,
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    }
    nfold = 3
    lgb_train = lgb.Dataset(X_train, y_train)

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    cv_res = lgb.cv(
        params,
        lgb_train,
        num_boost_round=10,
        nfold=nfold,
        callbacks=[lgb.early_stopping(stopping_rounds=5)],
        return_cvbooster=True,
    )
    cvbooster = cv_res["cvbooster"]
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    preds = cvbooster.predict(X_test)
    best_iteration = cvbooster.best_iteration

    cvbooster_from_disk = pickle_and_unpickle_object(obj=cvbooster, serializer=serializer)
    del cvbooster

    assert best_iteration == cvbooster_from_disk.best_iteration

    preds_from_disk = cvbooster_from_disk.predict(X_test)
    np.testing.assert_array_equal(preds, preds_from_disk)


1423
def test_feature_name():
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    X_train, y_train = make_synthetic_regression()
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    params = {"verbose": -1}
    feature_names = [f"f_{i}" for i in range(X_train.shape[-1])]
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    lgb_train = lgb.Dataset(X_train, y_train, feature_name=feature_names)
    gbm = lgb.train(params, lgb_train, num_boost_round=5)
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    assert feature_names == gbm.feature_name()
    # test feature_names with whitespaces
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    feature_names_with_space = [f"f {i}" for i in range(X_train.shape[-1])]
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    lgb_train.set_feature_name(feature_names_with_space)
    gbm = lgb.train(params, lgb_train, num_boost_round=5)
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    assert feature_names == gbm.feature_name()


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def test_feature_name_with_non_ascii(rng, tmp_path):
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    X_train = rng.normal(size=(100, 4))
    y_train = rng.normal(size=(100,))
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    # This has non-ascii strings.
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    feature_names = ["F_零", "F_一", "F_二", "F_三"]
    params = {"verbose": -1}
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    lgb_train = lgb.Dataset(X_train, y_train, feature_name=feature_names)
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    gbm = lgb.train(params, lgb_train, num_boost_round=5)
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    assert feature_names == gbm.feature_name()
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    model_path_txt = str(tmp_path / "lgb.model")
    gbm.save_model(model_path_txt)
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    gbm2 = lgb.Booster(model_file=model_path_txt)
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    assert feature_names == gbm2.feature_name()


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def test_parameters_are_loaded_from_model_file(tmp_path, capsys, rng):
    X = np.hstack(
        [
            rng.uniform(size=(100, 1)),
            rng.integers(low=0, high=5, size=(100, 2)),
        ]
    )
    y = rng.uniform(size=(100,))
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    ds = lgb.Dataset(X, y)
    params = {
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        "bagging_fraction": 0.8,
        "bagging_freq": 2,
        "boosting": "rf",
        "feature_contri": [0.5, 0.5, 0.5],
        "feature_fraction": 0.7,
        "boost_from_average": False,
        "interaction_constraints": [[0, 1], [0]],
        "metric": ["l2", "rmse"],
        "num_leaves": 5,
        "num_threads": 1,
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        "verbosity": 0,
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    }
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    model_file = tmp_path / "model.txt"
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    orig_bst = lgb.train(params, ds, num_boost_round=1, categorical_feature=[1, 2])
    orig_bst.save_model(model_file)
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    with model_file.open("rt") as f:
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        model_contents = f.readlines()
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    params_start = model_contents.index("parameters:\n")
    model_contents.insert(params_start + 1, "[max_conflict_rate: 0]\n")
    with model_file.open("wt") as f:
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        f.writelines(model_contents)
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    bst = lgb.Booster(model_file=model_file)
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    expected_msg = "[LightGBM] [Warning] Ignoring unrecognized parameter 'max_conflict_rate' found in model string."
    stdout = capsys.readouterr().out
    assert expected_msg in stdout
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    set_params = {k: bst.params[k] for k in params.keys()}
    assert set_params == params
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    assert bst.params["categorical_feature"] == [1, 2]
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    # check that passing parameters to the constructor raises warning and ignores them
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    with pytest.warns(UserWarning, match="Ignoring params argument"):
        bst2 = lgb.Booster(params={"num_leaves": 7}, model_file=model_file)
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    assert bst.params == bst2.params

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    # check inference isn't affected by unknown parameter
    orig_preds = orig_bst.predict(X)
    preds = bst.predict(X)
    np.testing.assert_allclose(preds, orig_preds)

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def test_save_load_copy_pickle(tmp_path):
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    def train_and_predict(init_model=None, return_model=False):
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        X, y = make_synthetic_regression()
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        X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
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        params = {"objective": "regression", "metric": "l2", "verbose": -1}
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        lgb_train = lgb.Dataset(X_train, y_train)
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        gbm_template = lgb.train(params, lgb_train, num_boost_round=10, init_model=init_model)
        return gbm_template if return_model else mean_squared_error(y_test, gbm_template.predict(X_test))

    gbm = train_and_predict(return_model=True)
    ret_origin = train_and_predict(init_model=gbm)
    other_ret = []
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    model_path_txt = str(tmp_path / "lgb.model")
    gbm.save_model(model_path_txt)
    with open(model_path_txt) as f:  # check all params are logged into model file correctly
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        assert f.read().find("[num_iterations: 10]") != -1
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    other_ret.append(train_and_predict(init_model=model_path_txt))
    gbm_load = lgb.Booster(model_file=model_path_txt)
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    other_ret.append(train_and_predict(init_model=gbm_load))
    other_ret.append(train_and_predict(init_model=copy.copy(gbm)))
    other_ret.append(train_and_predict(init_model=copy.deepcopy(gbm)))
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    model_path_pkl = str(tmp_path / "lgb.pkl")
    with open(model_path_pkl, "wb") as f:
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        pickle.dump(gbm, f)
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    with open(model_path_pkl, "rb") as f:
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        gbm_pickle = pickle.load(f)
    other_ret.append(train_and_predict(init_model=gbm_pickle))
    gbm_pickles = pickle.loads(pickle.dumps(gbm))
    other_ret.append(train_and_predict(init_model=gbm_pickles))
    for ret in other_ret:
        assert ret_origin == pytest.approx(ret)


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def test_all_expected_params_are_written_out_to_model_text(tmp_path):
    X, y = make_synthetic_regression()
    params = {
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        "objective": "mape",
        "metric": ["l2", "mae"],
        "seed": 708,
        "data_sample_strategy": "bagging",
        "sub_row": 0.8234,
        "verbose": -1,
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    }
    dtrain = lgb.Dataset(data=X, label=y)
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    gbm = lgb.train(params=params, train_set=dtrain, num_boost_round=3)
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    model_txt_from_memory = gbm.model_to_string()
    model_file = tmp_path / "out.model"
    gbm.save_model(filename=model_file)
    with open(model_file, "r") as f:
        model_txt_from_file = f.read()

    assert model_txt_from_memory == model_txt_from_file

    # entries whose values should reflect params passed to lgb.train()
    non_default_param_entries = [
        "[objective: mape]",
        # 'l1' was passed in with alias 'mae'
        "[metric: l2,l1]",
        "[data_sample_strategy: bagging]",
        "[seed: 708]",
        # NOTE: this was passed in with alias 'sub_row'
        "[bagging_fraction: 0.8234]",
        "[num_iterations: 3]",
    ]

    # entries with default values of params
    default_param_entries = [
        "[boosting: gbdt]",
        "[tree_learner: serial]",
        "[data: ]",
        "[valid: ]",
        "[learning_rate: 0.1]",
        "[num_leaves: 31]",
        "[num_threads: 0]",
        "[deterministic: 0]",
        "[histogram_pool_size: -1]",
        "[max_depth: -1]",
        "[min_data_in_leaf: 20]",
        "[min_sum_hessian_in_leaf: 0.001]",
        "[pos_bagging_fraction: 1]",
        "[neg_bagging_fraction: 1]",
        "[bagging_freq: 0]",
        "[bagging_seed: 15415]",
        "[feature_fraction: 1]",
        "[feature_fraction_bynode: 1]",
        "[feature_fraction_seed: 32671]",
        "[extra_trees: 0]",
        "[extra_seed: 6642]",
        "[early_stopping_round: 0]",
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        "[early_stopping_min_delta: 0]",
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        "[first_metric_only: 0]",
        "[max_delta_step: 0]",
        "[lambda_l1: 0]",
        "[lambda_l2: 0]",
        "[linear_lambda: 0]",
        "[min_gain_to_split: 0]",
        "[drop_rate: 0.1]",
        "[max_drop: 50]",
        "[skip_drop: 0.5]",
        "[xgboost_dart_mode: 0]",
        "[uniform_drop: 0]",
        "[drop_seed: 20623]",
        "[top_rate: 0.2]",
        "[other_rate: 0.1]",
        "[min_data_per_group: 100]",
        "[max_cat_threshold: 32]",
        "[cat_l2: 10]",
        "[cat_smooth: 10]",
        "[max_cat_to_onehot: 4]",
        "[top_k: 20]",
        "[monotone_constraints: ]",
        "[monotone_constraints_method: basic]",
        "[monotone_penalty: 0]",
        "[feature_contri: ]",
        "[forcedsplits_filename: ]",
        "[refit_decay_rate: 0.9]",
        "[cegb_tradeoff: 1]",
        "[cegb_penalty_split: 0]",
        "[cegb_penalty_feature_lazy: ]",
        "[cegb_penalty_feature_coupled: ]",
        "[path_smooth: 0]",
        "[interaction_constraints: ]",
        "[verbosity: -1]",
        "[saved_feature_importance_type: 0]",
        "[use_quantized_grad: 0]",
        "[num_grad_quant_bins: 4]",
        "[quant_train_renew_leaf: 0]",
        "[stochastic_rounding: 1]",
        "[linear_tree: 0]",
        "[max_bin: 255]",
        "[max_bin_by_feature: ]",
        "[min_data_in_bin: 3]",
        "[bin_construct_sample_cnt: 200000]",
        "[data_random_seed: 2350]",
        "[is_enable_sparse: 1]",
        "[enable_bundle: 1]",
        "[use_missing: 1]",
        "[zero_as_missing: 0]",
        "[feature_pre_filter: 1]",
        "[pre_partition: 0]",
        "[two_round: 0]",
        "[header: 0]",
        "[label_column: ]",
        "[weight_column: ]",
        "[group_column: ]",
        "[ignore_column: ]",
        "[categorical_feature: ]",
        "[forcedbins_filename: ]",
        "[precise_float_parser: 0]",
        "[parser_config_file: ]",
        "[objective_seed: 4309]",
        "[num_class: 1]",
        "[is_unbalance: 0]",
        "[scale_pos_weight: 1]",
        "[sigmoid: 1]",
        "[boost_from_average: 1]",
        "[reg_sqrt: 0]",
        "[alpha: 0.9]",
        "[fair_c: 1]",
        "[poisson_max_delta_step: 0.7]",
        "[tweedie_variance_power: 1.5]",
        "[lambdarank_truncation_level: 30]",
        "[lambdarank_norm: 1]",
        "[label_gain: ]",
        "[lambdarank_position_bias_regularization: 0]",
        "[eval_at: ]",
        "[multi_error_top_k: 1]",
        "[auc_mu_weights: ]",
        "[num_machines: 1]",
        "[local_listen_port: 12400]",
        "[time_out: 120]",
        "[machine_list_filename: ]",
        "[machines: ]",
        "[gpu_platform_id: -1]",
        "[gpu_device_id: -1]",
        "[num_gpu: 1]",
    ]
    all_param_entries = non_default_param_entries + default_param_entries

    # add device-specific entries
    #
    # passed-in force_col_wise / force_row_wise parameters are ignored on CUDA and GPU builds...
    # https://github.com/microsoft/LightGBM/blob/1d7ee63686272bceffd522284127573b511df6be/src/io/config.cpp#L375-L377
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    if getenv("TASK", "") == "cuda":
        device_entries = ["[force_col_wise: 0]", "[force_row_wise: 1]", "[device_type: cuda]", "[gpu_use_dp: 1]"]
    elif getenv("TASK", "") == "gpu":
        device_entries = ["[force_col_wise: 1]", "[force_row_wise: 0]", "[device_type: gpu]", "[gpu_use_dp: 0]"]
1692
    else:
1693
        device_entries = ["[force_col_wise: 0]", "[force_row_wise: 0]", "[device_type: cpu]", "[gpu_use_dp: 0]"]
1694
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    all_param_entries += device_entries

    # check that model text has all expected param entries
    for param_str in all_param_entries:
        assert param_str in model_txt_from_file
        assert param_str in model_txt_from_memory

    # since Booster.model_to_string() is used when pickling, check that parameters all
    # roundtrip pickling successfully too
    gbm_pkl = pickle_and_unpickle_object(gbm, serializer="joblib")
    model_txt_from_memory = gbm_pkl.model_to_string()
    model_file = tmp_path / "out-pkl.model"
    gbm_pkl.save_model(filename=model_file)
    with open(model_file, "r") as f:
        model_txt_from_file = f.read()

    for param_str in all_param_entries:
        assert param_str in model_txt_from_file
        assert param_str in model_txt_from_memory


1716
1717
# why fixed seed?
# sometimes there is no difference how cols are treated (cat or not cat)
1718
def test_pandas_categorical(rng_fixed_seed, tmp_path):
1719
    pd = pytest.importorskip("pandas")
1720
1721
    X = pd.DataFrame(
        {
1722
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            "A": rng_fixed_seed.permutation(["a", "b", "c", "d"] * 75),  # str
            "B": rng_fixed_seed.permutation([1, 2, 3] * 100),  # int
            "C": rng_fixed_seed.permutation([0.1, 0.2, -0.1, -0.1, 0.2] * 60),  # float
            "D": rng_fixed_seed.permutation([True, False] * 150),  # bool
            "E": pd.Categorical(rng_fixed_seed.permutation(["z", "y", "x", "w", "v"] * 60), ordered=True),
1727
1728
        }
    )  # str and ordered categorical
1729
    y = rng_fixed_seed.permutation([0, 1] * 150)
1730
1731
    X_test = pd.DataFrame(
        {
1732
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1736
            "A": rng_fixed_seed.permutation(["a", "b", "e"] * 20),  # unseen category
            "B": rng_fixed_seed.permutation([1, 3] * 30),
            "C": rng_fixed_seed.permutation([0.1, -0.1, 0.2, 0.2] * 15),
            "D": rng_fixed_seed.permutation([True, False] * 30),
            "E": pd.Categorical(rng_fixed_seed.permutation(["z", "y"] * 30), ordered=True),
1737
1738
        }
    )
1739
1740
    cat_cols_actual = ["A", "B", "C", "D"]
    cat_cols_to_store = cat_cols_actual + ["E"]
1741
1742
    X[cat_cols_actual] = X[cat_cols_actual].astype("category")
    X_test[cat_cols_actual] = X_test[cat_cols_actual].astype("category")
1743
    cat_values = [X[col].cat.categories.tolist() for col in cat_cols_to_store]
1744
    params = {"objective": "binary", "metric": "binary_logloss", "verbose": -1}
1745
1746
1747
    lgb_train = lgb.Dataset(X, y)
    gbm0 = lgb.train(params, lgb_train, num_boost_round=10)
    pred0 = gbm0.predict(X_test)
1748
    assert lgb_train.categorical_feature == "auto"
1749
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1753
    lgb_train = lgb.Dataset(X, pd.DataFrame(y))  # also test that label can be one-column pd.DataFrame
    gbm1 = lgb.train(params, lgb_train, num_boost_round=10, categorical_feature=[0])
    pred1 = gbm1.predict(X_test)
    assert lgb_train.categorical_feature == [0]
    lgb_train = lgb.Dataset(X, pd.Series(y))  # also test that label can be pd.Series
1754
    gbm2 = lgb.train(params, lgb_train, num_boost_round=10, categorical_feature=["A"])
1755
    pred2 = gbm2.predict(X_test)
1756
    assert lgb_train.categorical_feature == ["A"]
1757
    lgb_train = lgb.Dataset(X, y)
1758
    gbm3 = lgb.train(params, lgb_train, num_boost_round=10, categorical_feature=["A", "B", "C", "D"])
1759
    pred3 = gbm3.predict(X_test)
1760
    assert lgb_train.categorical_feature == ["A", "B", "C", "D"]
1761
1762
1763
    categorical_model_path = tmp_path / "categorical.model"
    gbm3.save_model(categorical_model_path)
    gbm4 = lgb.Booster(model_file=categorical_model_path)
1764
1765
    pred4 = gbm4.predict(X_test)
    model_str = gbm4.model_to_string()
1766
    gbm4.model_from_string(model_str)
1767
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1770
    pred5 = gbm4.predict(X_test)
    gbm5 = lgb.Booster(model_str=model_str)
    pred6 = gbm5.predict(X_test)
    lgb_train = lgb.Dataset(X, y)
1771
    gbm6 = lgb.train(params, lgb_train, num_boost_round=10, categorical_feature=["A", "B", "C", "D", "E"])
1772
    pred7 = gbm6.predict(X_test)
1773
    assert lgb_train.categorical_feature == ["A", "B", "C", "D", "E"]
1774
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    lgb_train = lgb.Dataset(X, y)
    gbm7 = lgb.train(params, lgb_train, num_boost_round=10, categorical_feature=[])
    pred8 = gbm7.predict(X_test)
    assert lgb_train.categorical_feature == []
    with pytest.raises(AssertionError):
        np.testing.assert_allclose(pred0, pred1)
    with pytest.raises(AssertionError):
        np.testing.assert_allclose(pred0, pred2)
    np.testing.assert_allclose(pred1, pred2)
    np.testing.assert_allclose(pred0, pred3)
    np.testing.assert_allclose(pred0, pred4)
    np.testing.assert_allclose(pred0, pred5)
    np.testing.assert_allclose(pred0, pred6)
    with pytest.raises(AssertionError):
        np.testing.assert_allclose(pred0, pred7)  # ordered cat features aren't treated as cat features by default
    with pytest.raises(AssertionError):
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        np.testing.assert_allclose(pred0, pred8)
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    assert gbm0.pandas_categorical == cat_values
    assert gbm1.pandas_categorical == cat_values
    assert gbm2.pandas_categorical == cat_values
    assert gbm3.pandas_categorical == cat_values
    assert gbm4.pandas_categorical == cat_values
    assert gbm5.pandas_categorical == cat_values
    assert gbm6.pandas_categorical == cat_values
    assert gbm7.pandas_categorical == cat_values


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def test_pandas_sparse(rng):
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    pd = pytest.importorskip("pandas")
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    X = pd.DataFrame(
        {
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            "A": pd.arrays.SparseArray(rng.permutation([0, 1, 2] * 100)),
            "B": pd.arrays.SparseArray(rng.permutation([0.0, 0.1, 0.2, -0.1, 0.2] * 60)),
            "C": pd.arrays.SparseArray(rng.permutation([True, False] * 150)),
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        }
    )
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    y = pd.Series(pd.arrays.SparseArray(rng.permutation([0, 1] * 150)))
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    X_test = pd.DataFrame(
        {
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            "A": pd.arrays.SparseArray(rng.permutation([0, 2] * 30)),
            "B": pd.arrays.SparseArray(rng.permutation([0.0, 0.1, 0.2, -0.1] * 15)),
            "C": pd.arrays.SparseArray(rng.permutation([True, False] * 30)),
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        }
    )
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    for dtype in pd.concat([X.dtypes, X_test.dtypes, pd.Series(y.dtypes)]):
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        assert isinstance(dtype, pd.SparseDtype)
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    params = {"objective": "binary", "verbose": -1}
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    lgb_train = lgb.Dataset(X, y)
    gbm = lgb.train(params, lgb_train, num_boost_round=10)
    pred_sparse = gbm.predict(X_test, raw_score=True)
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    if hasattr(X_test, "sparse"):
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        pred_dense = gbm.predict(X_test.sparse.to_dense(), raw_score=True)
    else:
        pred_dense = gbm.predict(X_test.to_dense(), raw_score=True)
    np.testing.assert_allclose(pred_sparse, pred_dense)


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def test_reference_chain(rng):
    X = rng.normal(size=(100, 2))
    y = rng.normal(size=(100,))
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    tmp_dat = lgb.Dataset(X, y)
    # take subsets and train
    tmp_dat_train = tmp_dat.subset(np.arange(80))
    tmp_dat_val = tmp_dat.subset(np.arange(80, 100)).subset(np.arange(18))
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    params = {"objective": "regression_l2", "metric": "rmse"}
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    evals_result = {}
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    lgb.train(
        params,
        tmp_dat_train,
        num_boost_round=20,
        valid_sets=[tmp_dat_train, tmp_dat_val],
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        callbacks=[lgb.record_evaluation(evals_result)],
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    )
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    assert len(evals_result["training"]["rmse"]) == 20
    assert len(evals_result["valid_1"]["rmse"]) == 20
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def test_contribs():
    X, y = load_breast_cancer(return_X_y=True)
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
    params = {
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        "objective": "binary",
        "metric": "binary_logloss",
        "verbose": -1,
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    }
    lgb_train = lgb.Dataset(X_train, y_train)
    gbm = lgb.train(params, lgb_train, num_boost_round=20)

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    assert (
        np.linalg.norm(gbm.predict(X_test, raw_score=True) - np.sum(gbm.predict(X_test, pred_contrib=True), axis=1))
        < 1e-4
    )
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def test_contribs_sparse():
    n_features = 20
    n_samples = 100
    # generate CSR sparse dataset
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    X, y = make_multilabel_classification(
        n_samples=n_samples, sparse=True, n_features=n_features, n_classes=1, n_labels=2
    )
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    y = y.flatten()
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
    params = {
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        "objective": "binary",
        "verbose": -1,
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    }
    lgb_train = lgb.Dataset(X_train, y_train)
    gbm = lgb.train(params, lgb_train, num_boost_round=20)
    contribs_csr = gbm.predict(X_test, pred_contrib=True)
    assert isspmatrix_csr(contribs_csr)
    # convert data to dense and get back same contribs
    contribs_dense = gbm.predict(X_test.toarray(), pred_contrib=True)
    # validate the values are the same
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    if platform.machine() == "aarch64":
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        np.testing.assert_allclose(contribs_csr.toarray(), contribs_dense, rtol=1, atol=1e-12)
    else:
        np.testing.assert_allclose(contribs_csr.toarray(), contribs_dense)
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    assert np.linalg.norm(gbm.predict(X_test, raw_score=True) - np.sum(contribs_dense, axis=1)) < 1e-4
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    # validate using CSC matrix
    X_test_csc = X_test.tocsc()
    contribs_csc = gbm.predict(X_test_csc, pred_contrib=True)
    assert isspmatrix_csc(contribs_csc)
    # validate the values are the same
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    if platform.machine() == "aarch64":
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        np.testing.assert_allclose(contribs_csc.toarray(), contribs_dense, rtol=1, atol=1e-12)
    else:
        np.testing.assert_allclose(contribs_csc.toarray(), contribs_dense)
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def test_contribs_sparse_multiclass():
    n_features = 20
    n_samples = 100
    n_labels = 4
    # generate CSR sparse dataset
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    X, y = make_multilabel_classification(
        n_samples=n_samples, sparse=True, n_features=n_features, n_classes=1, n_labels=n_labels
    )
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    y = y.flatten()
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
    params = {
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        "objective": "multiclass",
        "num_class": n_labels,
        "verbose": -1,
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    }
    lgb_train = lgb.Dataset(X_train, y_train)
    gbm = lgb.train(params, lgb_train, num_boost_round=20)
    contribs_csr = gbm.predict(X_test, pred_contrib=True)
    assert isinstance(contribs_csr, list)
    for perclass_contribs_csr in contribs_csr:
        assert isspmatrix_csr(perclass_contribs_csr)
    # convert data to dense and get back same contribs
    contribs_dense = gbm.predict(X_test.toarray(), pred_contrib=True)
    # validate the values are the same
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    contribs_csr_array = np.swapaxes(np.array([sparse_array.toarray() for sparse_array in contribs_csr]), 0, 1)
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    contribs_csr_arr_re = contribs_csr_array.reshape(
        (contribs_csr_array.shape[0], contribs_csr_array.shape[1] * contribs_csr_array.shape[2])
    )
    if platform.machine() == "aarch64":
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        np.testing.assert_allclose(contribs_csr_arr_re, contribs_dense, rtol=1, atol=1e-12)
    else:
        np.testing.assert_allclose(contribs_csr_arr_re, contribs_dense)
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    contribs_dense_re = contribs_dense.reshape(contribs_csr_array.shape)
    assert np.linalg.norm(gbm.predict(X_test, raw_score=True) - np.sum(contribs_dense_re, axis=2)) < 1e-4
    # validate using CSC matrix
    X_test_csc = X_test.tocsc()
    contribs_csc = gbm.predict(X_test_csc, pred_contrib=True)
    assert isinstance(contribs_csc, list)
    for perclass_contribs_csc in contribs_csc:
        assert isspmatrix_csc(perclass_contribs_csc)
    # validate the values are the same
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    contribs_csc_array = np.swapaxes(np.array([sparse_array.toarray() for sparse_array in contribs_csc]), 0, 1)
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    contribs_csc_array = contribs_csc_array.reshape(
        (contribs_csc_array.shape[0], contribs_csc_array.shape[1] * contribs_csc_array.shape[2])
    )
    if platform.machine() == "aarch64":
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        np.testing.assert_allclose(contribs_csc_array, contribs_dense, rtol=1, atol=1e-12)
    else:
        np.testing.assert_allclose(contribs_csc_array, contribs_dense)
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# @pytest.mark.skipif(psutil.virtual_memory().available / 1024 / 1024 / 1024 < 3, reason="not enough RAM")
# def test_int32_max_sparse_contribs(rng):
#     params = {"objective": "binary"}
#     train_features = rng.uniform(size=(100, 1000))
#     train_targets = [0] * 50 + [1] * 50
#     lgb_train = lgb.Dataset(train_features, train_targets)
#     gbm = lgb.train(params, lgb_train, num_boost_round=2)
#     csr_input_shape = (3000000, 1000)
#     test_features = csr_matrix(csr_input_shape)
#     for i in range(0, csr_input_shape[0], csr_input_shape[0] // 6):
#         for j in range(0, 1000, 100):
#             test_features[i, j] = random.random()
#     y_pred_csr = gbm.predict(test_features, pred_contrib=True)
#     # Note there is an extra column added to the output for the expected value
#     csr_output_shape = (csr_input_shape[0], csr_input_shape[1] + 1)
#     assert y_pred_csr.shape == csr_output_shape
#     y_pred_csc = gbm.predict(test_features.tocsc(), pred_contrib=True)
#     # Note output CSC shape should be same as CSR output shape
#     assert y_pred_csc.shape == csr_output_shape


def test_sliced_data(rng):
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    def train_and_get_predictions(features, labels):
        dataset = lgb.Dataset(features, label=labels)
        lgb_params = {
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            "application": "binary",
            "verbose": -1,
            "min_data": 5,
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        }
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        gbm = lgb.train(
            params=lgb_params,
            train_set=dataset,
            num_boost_round=10,
        )
        return gbm.predict(features)

    num_samples = 100
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    features = rng.uniform(size=(num_samples, 5))
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    positive_samples = int(num_samples * 0.25)
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    labels = np.append(
        np.ones(positive_samples, dtype=np.float32), np.zeros(num_samples - positive_samples, dtype=np.float32)
    )
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    # test sliced labels
    origin_pred = train_and_get_predictions(features, labels)
    stacked_labels = np.column_stack((labels, np.ones(num_samples, dtype=np.float32)))
    sliced_labels = stacked_labels[:, 0]
    sliced_pred = train_and_get_predictions(features, sliced_labels)
    np.testing.assert_allclose(origin_pred, sliced_pred)
    # append some columns
    stacked_features = np.column_stack((np.ones(num_samples, dtype=np.float32), features))
    stacked_features = np.column_stack((np.ones(num_samples, dtype=np.float32), stacked_features))
    stacked_features = np.column_stack((stacked_features, np.ones(num_samples, dtype=np.float32)))
    stacked_features = np.column_stack((stacked_features, np.ones(num_samples, dtype=np.float32)))
    # append some rows
    stacked_features = np.concatenate((np.ones(9, dtype=np.float32).reshape((1, 9)), stacked_features), axis=0)
    stacked_features = np.concatenate((np.ones(9, dtype=np.float32).reshape((1, 9)), stacked_features), axis=0)
    stacked_features = np.concatenate((stacked_features, np.ones(9, dtype=np.float32).reshape((1, 9))), axis=0)
    stacked_features = np.concatenate((stacked_features, np.ones(9, dtype=np.float32).reshape((1, 9))), axis=0)
    # test sliced 2d matrix
    sliced_features = stacked_features[2:102, 2:7]
    assert np.all(sliced_features == features)
    sliced_pred = train_and_get_predictions(sliced_features, sliced_labels)
    np.testing.assert_allclose(origin_pred, sliced_pred)
    # test sliced CSR
    stacked_csr = csr_matrix(stacked_features)
    sliced_csr = stacked_csr[2:102, 2:7]
    assert np.all(sliced_csr == features)
    sliced_pred = train_and_get_predictions(sliced_csr, sliced_labels)
    np.testing.assert_allclose(origin_pred, sliced_pred)


2026
def test_init_with_subset(tmp_path, rng):
2027
    data = rng.uniform(size=(50, 2))
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    y = [1] * 25 + [0] * 25
    lgb_train = lgb.Dataset(data, y, free_raw_data=False)
2030
    subset_index_1 = rng.choice(a=np.arange(50), size=30, replace=False)
2031
    subset_data_1 = lgb_train.subset(subset_index_1)
2032
    subset_index_2 = rng.choice(a=np.arange(50), size=20, replace=False)
2033
    subset_data_2 = lgb_train.subset(subset_index_2)
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    params = {"objective": "binary", "verbose": -1}
    init_gbm = lgb.train(params=params, train_set=subset_data_1, num_boost_round=10, keep_training_booster=True)
    lgb.train(params=params, train_set=subset_data_2, num_boost_round=10, init_model=init_gbm)
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    assert lgb_train.get_data().shape[0] == 50
    assert subset_data_1.get_data().shape[0] == 30
    assert subset_data_2.get_data().shape[0] == 20
2040
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    lgb_train_data = str(tmp_path / "lgb_train_data.bin")
    lgb_train.save_binary(lgb_train_data)
    lgb_train_from_file = lgb.Dataset(lgb_train_data, free_raw_data=False)
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    subset_data_3 = lgb_train_from_file.subset(subset_index_1)
    subset_data_4 = lgb_train_from_file.subset(subset_index_2)
2045
    init_gbm_2 = lgb.train(params=params, train_set=subset_data_3, num_boost_round=10, keep_training_booster=True)
2046
    with np.testing.assert_raises_regex(lgb.basic.LightGBMError, "Unknown format of training data"):
2047
        lgb.train(params=params, train_set=subset_data_4, num_boost_round=10, init_model=init_gbm_2)
2048
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    assert lgb_train_from_file.get_data() == lgb_train_data
    assert subset_data_3.get_data() == lgb_train_data
    assert subset_data_4.get_data() == lgb_train_data
2051
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2055
def test_training_on_constructed_subset_without_params(rng):
    X = rng.uniform(size=(100, 10))
    y = rng.uniform(size=(100,))
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    lgb_data = lgb.Dataset(X, y)
    subset_indices = [1, 2, 3, 4]
    subset = lgb_data.subset(subset_indices).construct()
    bst = lgb.train({}, subset, num_boost_round=1)
    assert subset.get_params() == {}
    assert subset.num_data() == len(subset_indices)
    assert bst.current_iteration() == 1


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def generate_trainset_for_monotone_constraints_tests(x3_to_category=True):
    number_of_dpoints = 3000
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    rng = np.random.default_rng()
    x1_positively_correlated_with_y = rng.uniform(size=number_of_dpoints)
    x2_negatively_correlated_with_y = rng.uniform(size=number_of_dpoints)
    x3_negatively_correlated_with_y = rng.uniform(size=number_of_dpoints)
2071
    x = np.column_stack(
2072
2073
        (
            x1_positively_correlated_with_y,
2074
            x2_negatively_correlated_with_y,
2075
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2077
            categorize(x3_negatively_correlated_with_y) if x3_to_category else x3_negatively_correlated_with_y,
        )
    )
2078

2079
2080
    zs = rng.normal(loc=0.0, scale=0.01, size=number_of_dpoints)
    scales = 10.0 * (rng.uniform(size=6) + 0.5)
2081
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    y = (
        scales[0] * x1_positively_correlated_with_y
        + np.sin(scales[1] * np.pi * x1_positively_correlated_with_y)
        - scales[2] * x2_negatively_correlated_with_y
        - np.cos(scales[3] * np.pi * x2_negatively_correlated_with_y)
        - scales[4] * x3_negatively_correlated_with_y
        - np.cos(scales[5] * np.pi * x3_negatively_correlated_with_y)
        + zs
    )
2090
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2092
    categorical_features = []
    if x3_to_category:
        categorical_features = [2]
2093
    return lgb.Dataset(x, label=y, categorical_feature=categorical_features, free_raw_data=False)
2094
2095


2096
@pytest.mark.skipif(getenv("TASK", "") == "cuda", reason="Monotone constraints are not yet supported by CUDA version")
2097
2098
@pytest.mark.parametrize("test_with_categorical_variable", [True, False])
def test_monotone_constraints(test_with_categorical_variable):
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2112
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2118
    def is_increasing(y):
        return (np.diff(y) >= 0.0).all()

    def is_decreasing(y):
        return (np.diff(y) <= 0.0).all()

    def is_non_monotone(y):
        return (np.diff(y) < 0.0).any() and (np.diff(y) > 0.0).any()

    def is_correctly_constrained(learner, x3_to_category=True):
        iterations = 10
        n = 1000
        variable_x = np.linspace(0, 1, n).reshape((n, 1))
        fixed_xs_values = np.linspace(0, 1, n)
        for i in range(iterations):
            fixed_x = fixed_xs_values[i] * np.ones((n, 1))
            monotonically_increasing_x = np.column_stack((variable_x, fixed_x, fixed_x))
            monotonically_increasing_y = learner.predict(monotonically_increasing_x)
            monotonically_decreasing_x = np.column_stack((fixed_x, variable_x, fixed_x))
            monotonically_decreasing_y = learner.predict(monotonically_decreasing_x)
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            non_monotone_x = np.column_stack(
                (
                    fixed_x,
                    fixed_x,
                    categorize(variable_x) if x3_to_category else variable_x,
                )
            )
2126
            non_monotone_y = learner.predict(non_monotone_x)
2127
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            if not (
                is_increasing(monotonically_increasing_y)
                and is_decreasing(monotonically_decreasing_y)
                and is_non_monotone(non_monotone_y)
            ):
2132
                return False
2133
        return True
2134

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2142
    def are_interactions_enforced(gbm, feature_sets):
        def parse_tree_features(gbm):
            # trees start at position 1.
            tree_str = gbm.model_to_string().split("Tree")[1:]
            feature_sets = []
            for tree in tree_str:
                # split_features are in 4th line.
                features = tree.splitlines()[3].split("=")[1].split(" ")
2143
                features = {f"Column_{f}" for f in features}
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                feature_sets.append(features)
            return np.array(feature_sets)

        def has_interaction(treef):
            n = 0
            for fs in feature_sets:
                if len(treef.intersection(fs)) > 0:
                    n += 1
            return n > 1

        tree_features = parse_tree_features(gbm)
2155
        has_interaction_flag = np.array([has_interaction(treef) for treef in tree_features])
2156
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2158

        return not has_interaction_flag.any()

2159
    trainset = generate_trainset_for_monotone_constraints_tests(test_with_categorical_variable)
2160
    for test_with_interaction_constraints in [True, False]:
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        error_msg = (
            "Model not correctly constrained "
            f"(test_with_interaction_constraints={test_with_interaction_constraints})"
        )
2165
        for monotone_constraints_method in ["basic", "intermediate", "advanced"]:
2166
            params = {
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                "min_data": 20,
                "num_leaves": 20,
                "monotone_constraints": [1, -1, 0],
2170
                "monotone_constraints_method": monotone_constraints_method,
2171
                "use_missing": False,
2172
            }
2173
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            if test_with_interaction_constraints:
                params["interaction_constraints"] = [[0], [1], [2]]
2175
            constrained_model = lgb.train(params, trainset)
2176
            assert is_correctly_constrained(constrained_model, test_with_categorical_variable), error_msg
2177
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2179
            if test_with_interaction_constraints:
                feature_sets = [["Column_0"], ["Column_1"], "Column_2"]
                assert are_interactions_enforced(constrained_model, feature_sets)
2180
2181


2182
@pytest.mark.skipif(getenv("TASK", "") == "cuda", reason="Monotone constraints are not yet supported by CUDA version")
2183
2184
2185
2186
2187
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2189
2190
def test_monotone_penalty():
    def are_first_splits_non_monotone(tree, n, monotone_constraints):
        if n <= 0:
            return True
        if "leaf_value" in tree:
            return True
        if monotone_constraints[tree["split_feature"]] != 0:
            return False
2191
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2193
        return are_first_splits_non_monotone(
            tree["left_child"], n - 1, monotone_constraints
        ) and are_first_splits_non_monotone(tree["right_child"], n - 1, monotone_constraints)
2194
2195
2196
2197
2198
2199

    def are_there_monotone_splits(tree, monotone_constraints):
        if "leaf_value" in tree:
            return False
        if monotone_constraints[tree["split_feature"]] != 0:
            return True
2200
2201
2202
        return are_there_monotone_splits(tree["left_child"], monotone_constraints) or are_there_monotone_splits(
            tree["right_child"], monotone_constraints
        )
2203
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2205
2206
2207
2208

    max_depth = 5
    monotone_constraints = [1, -1, 0]
    penalization_parameter = 2.0
    trainset = generate_trainset_for_monotone_constraints_tests(x3_to_category=False)
    for monotone_constraints_method in ["basic", "intermediate", "advanced"]:
2209
        params = {
2210
2211
2212
            "max_depth": max_depth,
            "monotone_constraints": monotone_constraints,
            "monotone_penalty": penalization_parameter,
2213
            "monotone_constraints_method": monotone_constraints_method,
2214
        }
2215
2216
2217
        constrained_model = lgb.train(params, trainset, 10)
        dumped_model = constrained_model.dump_model()["tree_info"]
        for tree in dumped_model:
2218
2219
2220
            assert are_first_splits_non_monotone(
                tree["tree_structure"], int(penalization_parameter), monotone_constraints
            )
2221
2222
2223
2224
            assert are_there_monotone_splits(tree["tree_structure"], monotone_constraints)


# test if a penalty as high as the depth indeed prohibits all monotone splits
2225
@pytest.mark.skipif(getenv("TASK", "") == "cuda", reason="Monotone constraints are not yet supported by CUDA version")
2226
2227
2228
2229
2230
2231
2232
2233
2234
2235
def test_monotone_penalty_max():
    max_depth = 5
    monotone_constraints = [1, -1, 0]
    penalization_parameter = max_depth
    trainset_constrained_model = generate_trainset_for_monotone_constraints_tests(x3_to_category=False)
    x = trainset_constrained_model.data
    y = trainset_constrained_model.label
    x3_negatively_correlated_with_y = x[:, 2]
    trainset_unconstrained_model = lgb.Dataset(x3_negatively_correlated_with_y.reshape(-1, 1), label=y)
    params_constrained_model = {
2236
2237
        "monotone_constraints": monotone_constraints,
        "monotone_penalty": penalization_parameter,
2238
2239
2240
2241
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2246
        "max_depth": max_depth,
        "gpu_use_dp": True,
    }
    params_unconstrained_model = {
        "max_depth": max_depth,
        "gpu_use_dp": True,
    }

    unconstrained_model = lgb.train(params_unconstrained_model, trainset_unconstrained_model, 10)
2247
    unconstrained_model_predictions = unconstrained_model.predict(x3_negatively_correlated_with_y.reshape(-1, 1))
2248
2249
2250
2251
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2253
2254
2255
2256
2257
2258
2259
2260
2261
2262
2263
2264

    for monotone_constraints_method in ["basic", "intermediate", "advanced"]:
        params_constrained_model["monotone_constraints_method"] = monotone_constraints_method
        # The penalization is so high that the first 2 features should not be used here
        constrained_model = lgb.train(params_constrained_model, trainset_constrained_model, 10)

        # Check that a very high penalization is the same as not using the features at all
        np.testing.assert_array_equal(constrained_model.predict(x), unconstrained_model_predictions)


def test_max_bin_by_feature():
    col1 = np.arange(0, 100)[:, np.newaxis]
    col2 = np.zeros((100, 1))
    col2[20:] = 1
    X = np.concatenate([col1, col2], axis=1)
    y = np.arange(0, 100)
    params = {
2265
2266
2267
2268
2269
2270
2271
        "objective": "regression_l2",
        "verbose": -1,
        "num_leaves": 100,
        "min_data_in_leaf": 1,
        "min_sum_hessian_in_leaf": 0,
        "min_data_in_bin": 1,
        "max_bin_by_feature": [100, 2],
2272
2273
2274
2275
    }
    lgb_data = lgb.Dataset(X, label=y)
    est = lgb.train(params, lgb_data, num_boost_round=1)
    assert len(np.unique(est.predict(X))) == 100
2276
    params["max_bin_by_feature"] = [2, 100]
2277
2278
2279
2280
2281
    lgb_data = lgb.Dataset(X, label=y)
    est = lgb.train(params, lgb_data, num_boost_round=1)
    assert len(np.unique(est.predict(X))) == 3


2282
2283
def test_small_max_bin(rng_fixed_seed):
    y = rng_fixed_seed.choice([0, 1], 100)
2284
    x = np.ones((100, 1))
2285
2286
    x[:30, 0] = -1
    x[60:, 0] = 2
2287
    params = {"objective": "binary", "seed": 0, "min_data_in_leaf": 1, "verbose": -1, "max_bin": 2}
2288
2289
2290
    lgb_x = lgb.Dataset(x, label=y)
    lgb.train(params, lgb_x, num_boost_round=5)
    x[0, 0] = np.nan
2291
    params["max_bin"] = 3
2292
2293
2294
2295
2296
2297
2298
    lgb_x = lgb.Dataset(x, label=y)
    lgb.train(params, lgb_x, num_boost_round=5)


def test_refit():
    X, y = load_breast_cancer(return_X_y=True)
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
2299
    params = {"objective": "binary", "metric": "binary_logloss", "verbose": -1, "min_data": 10}
2300
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2302
2303
2304
2305
2306
2307
    lgb_train = lgb.Dataset(X_train, y_train)
    gbm = lgb.train(params, lgb_train, num_boost_round=20)
    err_pred = log_loss(y_test, gbm.predict(X_test))
    new_gbm = gbm.refit(X_test, y_test)
    new_err_pred = log_loss(y_test, new_gbm.predict(X_test))
    assert err_pred > new_err_pred


2308
def test_refit_dataset_params(rng):
2309
2310
2311
    # check refit accepts dataset_params
    X, y = load_breast_cancer(return_X_y=True)
    lgb_train = lgb.Dataset(X, y, init_score=np.zeros(y.size))
2312
    train_params = {"objective": "binary", "verbose": -1, "seed": 123}
2313
2314
    gbm = lgb.train(train_params, lgb_train, num_boost_round=10)
    non_weight_err_pred = log_loss(y, gbm.predict(X))
2315
    refit_weight = rng.uniform(size=(y.shape[0],))
2316
    dataset_params = {
2317
2318
2319
        "max_bin": 260,
        "min_data_in_bin": 5,
        "data_random_seed": 123,
2320
2321
2322
2323
2324
2325
2326
2327
2328
2329
2330
2331
2332
2333
2334
2335
2336
2337
    }
    new_gbm = gbm.refit(
        data=X,
        label=y,
        weight=refit_weight,
        dataset_params=dataset_params,
        decay_rate=0.0,
    )
    weight_err_pred = log_loss(y, new_gbm.predict(X))
    train_set_params = new_gbm.train_set.get_params()
    stored_weights = new_gbm.train_set.get_weight()
    assert weight_err_pred != non_weight_err_pred
    assert train_set_params["max_bin"] == 260
    assert train_set_params["min_data_in_bin"] == 5
    assert train_set_params["data_random_seed"] == 123
    np.testing.assert_allclose(stored_weights, refit_weight)


2338
@pytest.mark.parametrize("boosting_type", ["rf", "dart"])
2339
2340
2341
def test_mape_for_specific_boosting_types(boosting_type):
    X, y = make_synthetic_regression()
    y = abs(y)
2342
    params = {
2343
2344
2345
2346
2347
2348
2349
        "boosting_type": boosting_type,
        "objective": "mape",
        "verbose": -1,
        "bagging_freq": 1,
        "bagging_fraction": 0.8,
        "feature_fraction": 0.8,
        "boost_from_average": True,
2350
2351
2352
2353
2354
    }
    lgb_train = lgb.Dataset(X, y)
    gbm = lgb.train(params, lgb_train, num_boost_round=20)
    pred = gbm.predict(X)
    pred_mean = pred.mean()
2355
2356
2357
    # the following checks that dart and rf with mape can predict outside the 0-1 range
    # https://github.com/microsoft/LightGBM/issues/1579
    assert pred_mean > 8
2358
2359
2360
2361
2362
2363


def check_constant_features(y_true, expected_pred, more_params):
    X_train = np.ones((len(y_true), 1))
    y_train = np.array(y_true)
    params = {
2364
2365
2366
2367
2368
2369
2370
2371
        "objective": "regression",
        "num_class": 1,
        "verbose": -1,
        "min_data": 1,
        "num_leaves": 2,
        "learning_rate": 1,
        "min_data_in_bin": 1,
        "boost_from_average": True,
2372
2373
2374
2375
2376
2377
2378
2379
2380
    }
    params.update(more_params)
    lgb_train = lgb.Dataset(X_train, y_train, params=params)
    gbm = lgb.train(params, lgb_train, num_boost_round=2)
    pred = gbm.predict(X_train)
    assert np.allclose(pred, expected_pred)


def test_constant_features_regression():
2381
    params = {"objective": "regression"}
2382
2383
2384
2385
2386
2387
    check_constant_features([0.0, 10.0, 0.0, 10.0], 5.0, params)
    check_constant_features([0.0, 1.0, 2.0, 3.0], 1.5, params)
    check_constant_features([-1.0, 1.0, -2.0, 2.0], 0.0, params)


def test_constant_features_binary():
2388
    params = {"objective": "binary"}
2389
2390
2391
2392
2393
    check_constant_features([0.0, 10.0, 0.0, 10.0], 0.5, params)
    check_constant_features([0.0, 1.0, 2.0, 3.0], 0.75, params)


def test_constant_features_multiclass():
2394
    params = {"objective": "multiclass", "num_class": 3}
2395
2396
2397
2398
2399
    check_constant_features([0.0, 1.0, 2.0, 0.0], [0.5, 0.25, 0.25], params)
    check_constant_features([0.0, 1.0, 2.0, 1.0], [0.25, 0.5, 0.25], params)


def test_constant_features_multiclassova():
2400
    params = {"objective": "multiclassova", "num_class": 3}
2401
2402
2403
2404
2405
2406
2407
2408
2409
2410
2411
2412
2413
2414
    check_constant_features([0.0, 1.0, 2.0, 0.0], [0.5, 0.25, 0.25], params)
    check_constant_features([0.0, 1.0, 2.0, 1.0], [0.25, 0.5, 0.25], params)


def test_fpreproc():
    def preprocess_data(dtrain, dtest, params):
        train_data = dtrain.construct().get_data()
        test_data = dtest.construct().get_data()
        train_data[:, 0] += 1
        test_data[:, 0] += 1
        dtrain.label[-5:] = 3
        dtest.label[-5:] = 3
        dtrain = lgb.Dataset(train_data, dtrain.label)
        dtest = lgb.Dataset(test_data, dtest.label, reference=dtrain)
2415
        params["num_class"] = 4
2416
2417
2418
2419
        return dtrain, dtest, params

    X, y = load_iris(return_X_y=True)
    dataset = lgb.Dataset(X, y, free_raw_data=False)
2420
    params = {"objective": "multiclass", "num_class": 3, "verbose": -1}
2421
    results = lgb.cv(params, dataset, num_boost_round=10, fpreproc=preprocess_data)
2422
2423
    assert "valid multi_logloss-mean" in results
    assert len(results["valid multi_logloss-mean"]) == 10
2424
2425
2426
2427
2428


def test_metrics():
    X, y = load_digits(n_class=2, return_X_y=True)
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
2429
2430
    lgb_train = lgb.Dataset(X_train, y_train)
    lgb_valid = lgb.Dataset(X_test, y_test, reference=lgb_train)
2431
2432

    evals_result = {}
2433
2434
2435
2436
2437
2438
2439
2440
2441
2442
2443
2444
2445
2446
2447
2448
2449
2450
2451
2452
2453
    params_dummy_obj_verbose = {"verbose": -1, "objective": dummy_obj}
    params_obj_verbose = {"objective": "binary", "verbose": -1}
    params_obj_metric_log_verbose = {"objective": "binary", "metric": "binary_logloss", "verbose": -1}
    params_obj_metric_err_verbose = {"objective": "binary", "metric": "binary_error", "verbose": -1}
    params_obj_metric_inv_verbose = {"objective": "binary", "metric": "invalid_metric", "verbose": -1}
    params_obj_metric_quant_verbose = {"objective": "regression", "metric": "quantile", "verbose": 2}
    params_obj_metric_multi_verbose = {
        "objective": "binary",
        "metric": ["binary_logloss", "binary_error"],
        "verbose": -1,
    }
    params_obj_metric_none_verbose = {"objective": "binary", "metric": "None", "verbose": -1}
    params_dummy_obj_metric_log_verbose = {"objective": dummy_obj, "metric": "binary_logloss", "verbose": -1}
    params_dummy_obj_metric_err_verbose = {"objective": dummy_obj, "metric": "binary_error", "verbose": -1}
    params_dummy_obj_metric_inv_verbose = {"objective": dummy_obj, "metric_types": "invalid_metric", "verbose": -1}
    params_dummy_obj_metric_multi_verbose = {
        "objective": dummy_obj,
        "metric": ["binary_logloss", "binary_error"],
        "verbose": -1,
    }
    params_dummy_obj_metric_none_verbose = {"objective": dummy_obj, "metric": "None", "verbose": -1}
2454
2455

    def get_cv_result(params=params_obj_verbose, **kwargs):
2456
        return lgb.cv(params, lgb_train, num_boost_round=2, **kwargs)
2457
2458

    def train_booster(params=params_obj_verbose, **kwargs):
2459
2460
2461
2462
2463
2464
        lgb.train(
            params,
            lgb_train,
            num_boost_round=2,
            valid_sets=[lgb_valid],
            callbacks=[lgb.record_evaluation(evals_result)],
2465
            **kwargs,
2466
        )
2467

2468
    # no custom objective, no feval
2469
2470
2471
    # default metric
    res = get_cv_result()
    assert len(res) == 2
2472
    assert "valid binary_logloss-mean" in res
2473
2474
2475
2476

    # non-default metric in params
    res = get_cv_result(params=params_obj_metric_err_verbose)
    assert len(res) == 2
2477
    assert "valid binary_error-mean" in res
2478
2479

    # default metric in args
2480
    res = get_cv_result(metrics="binary_logloss")
2481
    assert len(res) == 2
2482
    assert "valid binary_logloss-mean" in res
2483
2484

    # non-default metric in args
2485
    res = get_cv_result(metrics="binary_error")
2486
    assert len(res) == 2
2487
    assert "valid binary_error-mean" in res
2488
2489

    # metric in args overwrites one in params
2490
    res = get_cv_result(params=params_obj_metric_inv_verbose, metrics="binary_error")
2491
    assert len(res) == 2
2492
    assert "valid binary_error-mean" in res
2493

2494
2495
2496
    # metric in args overwrites one in params
    res = get_cv_result(params=params_obj_metric_quant_verbose)
    assert len(res) == 2
2497
    assert "valid quantile-mean" in res
2498

2499
2500
2501
    # multiple metrics in params
    res = get_cv_result(params=params_obj_metric_multi_verbose)
    assert len(res) == 4
2502
2503
    assert "valid binary_logloss-mean" in res
    assert "valid binary_error-mean" in res
2504
2505

    # multiple metrics in args
2506
    res = get_cv_result(metrics=["binary_logloss", "binary_error"])
2507
    assert len(res) == 4
2508
2509
    assert "valid binary_logloss-mean" in res
    assert "valid binary_error-mean" in res
2510
2511

    # remove default metric by 'None' in list
2512
    res = get_cv_result(metrics=["None"])
2513
2514
2515
    assert len(res) == 0

    # remove default metric by 'None' aliases
2516
    for na_alias in ("None", "na", "null", "custom"):
2517
2518
2519
        res = get_cv_result(metrics=na_alias)
        assert len(res) == 0

2520
    # custom objective, no feval
2521
    # no default metric
2522
    res = get_cv_result(params=params_dummy_obj_verbose)
2523
2524
2525
    assert len(res) == 0

    # metric in params
2526
    res = get_cv_result(params=params_dummy_obj_metric_err_verbose)
2527
    assert len(res) == 2
2528
    assert "valid binary_error-mean" in res
2529
2530

    # metric in args
2531
    res = get_cv_result(params=params_dummy_obj_verbose, metrics="binary_error")
2532
    assert len(res) == 2
2533
    assert "valid binary_error-mean" in res
2534
2535

    # metric in args overwrites its' alias in params
2536
    res = get_cv_result(params=params_dummy_obj_metric_inv_verbose, metrics="binary_error")
2537
    assert len(res) == 2
2538
    assert "valid binary_error-mean" in res
2539
2540

    # multiple metrics in params
2541
    res = get_cv_result(params=params_dummy_obj_metric_multi_verbose)
2542
    assert len(res) == 4
2543
2544
    assert "valid binary_logloss-mean" in res
    assert "valid binary_error-mean" in res
2545
2546

    # multiple metrics in args
2547
    res = get_cv_result(params=params_dummy_obj_verbose, metrics=["binary_logloss", "binary_error"])
2548
    assert len(res) == 4
2549
2550
    assert "valid binary_logloss-mean" in res
    assert "valid binary_error-mean" in res
2551

2552
    # no custom objective, feval
2553
2554
2555
    # default metric with custom one
    res = get_cv_result(feval=constant_metric)
    assert len(res) == 4
2556
2557
    assert "valid binary_logloss-mean" in res
    assert "valid error-mean" in res
2558
2559
2560
2561

    # non-default metric in params with custom one
    res = get_cv_result(params=params_obj_metric_err_verbose, feval=constant_metric)
    assert len(res) == 4
2562
2563
    assert "valid binary_error-mean" in res
    assert "valid error-mean" in res
2564
2565

    # default metric in args with custom one
2566
    res = get_cv_result(metrics="binary_logloss", feval=constant_metric)
2567
    assert len(res) == 4
2568
2569
    assert "valid binary_logloss-mean" in res
    assert "valid error-mean" in res
2570
2571

    # non-default metric in args with custom one
2572
    res = get_cv_result(metrics="binary_error", feval=constant_metric)
2573
    assert len(res) == 4
2574
2575
    assert "valid binary_error-mean" in res
    assert "valid error-mean" in res
2576
2577

    # metric in args overwrites one in params, custom one is evaluated too
2578
    res = get_cv_result(params=params_obj_metric_inv_verbose, metrics="binary_error", feval=constant_metric)
2579
    assert len(res) == 4
2580
2581
    assert "valid binary_error-mean" in res
    assert "valid error-mean" in res
2582
2583
2584
2585

    # multiple metrics in params with custom one
    res = get_cv_result(params=params_obj_metric_multi_verbose, feval=constant_metric)
    assert len(res) == 6
2586
2587
2588
    assert "valid binary_logloss-mean" in res
    assert "valid binary_error-mean" in res
    assert "valid error-mean" in res
2589
2590

    # multiple metrics in args with custom one
2591
    res = get_cv_result(metrics=["binary_logloss", "binary_error"], feval=constant_metric)
2592
    assert len(res) == 6
2593
2594
2595
    assert "valid binary_logloss-mean" in res
    assert "valid binary_error-mean" in res
    assert "valid error-mean" in res
2596
2597

    # custom metric is evaluated despite 'None' is passed
2598
    res = get_cv_result(metrics=["None"], feval=constant_metric)
2599
    assert len(res) == 2
2600
    assert "valid error-mean" in res
2601

2602
    # custom objective, feval
2603
    # no default metric, only custom one
2604
    res = get_cv_result(params=params_dummy_obj_verbose, feval=constant_metric)
2605
    assert len(res) == 2
2606
    assert "valid error-mean" in res
2607
2608

    # metric in params with custom one
2609
    res = get_cv_result(params=params_dummy_obj_metric_err_verbose, feval=constant_metric)
2610
    assert len(res) == 4
2611
2612
    assert "valid binary_error-mean" in res
    assert "valid error-mean" in res
2613
2614

    # metric in args with custom one
2615
    res = get_cv_result(params=params_dummy_obj_verbose, feval=constant_metric, metrics="binary_error")
2616
    assert len(res) == 4
2617
2618
    assert "valid binary_error-mean" in res
    assert "valid error-mean" in res
2619
2620

    # metric in args overwrites one in params, custom one is evaluated too
2621
    res = get_cv_result(params=params_dummy_obj_metric_inv_verbose, feval=constant_metric, metrics="binary_error")
2622
    assert len(res) == 4
2623
2624
    assert "valid binary_error-mean" in res
    assert "valid error-mean" in res
2625
2626

    # multiple metrics in params with custom one
2627
    res = get_cv_result(params=params_dummy_obj_metric_multi_verbose, feval=constant_metric)
2628
    assert len(res) == 6
2629
2630
2631
    assert "valid binary_logloss-mean" in res
    assert "valid binary_error-mean" in res
    assert "valid error-mean" in res
2632
2633

    # multiple metrics in args with custom one
2634
2635
2636
    res = get_cv_result(
        params=params_dummy_obj_verbose, feval=constant_metric, metrics=["binary_logloss", "binary_error"]
    )
2637
    assert len(res) == 6
2638
2639
2640
    assert "valid binary_logloss-mean" in res
    assert "valid binary_error-mean" in res
    assert "valid error-mean" in res
2641
2642

    # custom metric is evaluated despite 'None' is passed
2643
    res = get_cv_result(params=params_dummy_obj_metric_none_verbose, feval=constant_metric)
2644
    assert len(res) == 2
2645
    assert "valid error-mean" in res
2646

2647
    # no custom objective, no feval
2648
2649
    # default metric
    train_booster()
2650
2651
    assert len(evals_result["valid_0"]) == 1
    assert "binary_logloss" in evals_result["valid_0"]
2652
2653
2654

    # default metric in params
    train_booster(params=params_obj_metric_log_verbose)
2655
2656
    assert len(evals_result["valid_0"]) == 1
    assert "binary_logloss" in evals_result["valid_0"]
2657
2658
2659

    # non-default metric in params
    train_booster(params=params_obj_metric_err_verbose)
2660
2661
    assert len(evals_result["valid_0"]) == 1
    assert "binary_error" in evals_result["valid_0"]
2662
2663
2664

    # multiple metrics in params
    train_booster(params=params_obj_metric_multi_verbose)
2665
2666
2667
    assert len(evals_result["valid_0"]) == 2
    assert "binary_logloss" in evals_result["valid_0"]
    assert "binary_error" in evals_result["valid_0"]
2668
2669

    # remove default metric by 'None' aliases
2670
2671
    for na_alias in ("None", "na", "null", "custom"):
        params = {"objective": "binary", "metric": na_alias, "verbose": -1}
2672
2673
2674
        train_booster(params=params)
        assert len(evals_result) == 0

2675
    # custom objective, no feval
2676
    # no default metric
2677
    train_booster(params=params_dummy_obj_verbose)
2678
2679
2680
    assert len(evals_result) == 0

    # metric in params
2681
    train_booster(params=params_dummy_obj_metric_log_verbose)
2682
2683
    assert len(evals_result["valid_0"]) == 1
    assert "binary_logloss" in evals_result["valid_0"]
2684
2685

    # multiple metrics in params
2686
    train_booster(params=params_dummy_obj_metric_multi_verbose)
2687
2688
2689
    assert len(evals_result["valid_0"]) == 2
    assert "binary_logloss" in evals_result["valid_0"]
    assert "binary_error" in evals_result["valid_0"]
2690

2691
    # no custom objective, feval
2692
2693
    # default metric with custom one
    train_booster(feval=constant_metric)
2694
2695
2696
    assert len(evals_result["valid_0"]) == 2
    assert "binary_logloss" in evals_result["valid_0"]
    assert "error" in evals_result["valid_0"]
2697
2698
2699

    # default metric in params with custom one
    train_booster(params=params_obj_metric_log_verbose, feval=constant_metric)
2700
2701
2702
    assert len(evals_result["valid_0"]) == 2
    assert "binary_logloss" in evals_result["valid_0"]
    assert "error" in evals_result["valid_0"]
2703
2704
2705

    # non-default metric in params with custom one
    train_booster(params=params_obj_metric_err_verbose, feval=constant_metric)
2706
2707
2708
    assert len(evals_result["valid_0"]) == 2
    assert "binary_error" in evals_result["valid_0"]
    assert "error" in evals_result["valid_0"]
2709
2710
2711

    # multiple metrics in params with custom one
    train_booster(params=params_obj_metric_multi_verbose, feval=constant_metric)
2712
2713
2714
2715
    assert len(evals_result["valid_0"]) == 3
    assert "binary_logloss" in evals_result["valid_0"]
    assert "binary_error" in evals_result["valid_0"]
    assert "error" in evals_result["valid_0"]
2716
2717
2718
2719

    # custom metric is evaluated despite 'None' is passed
    train_booster(params=params_obj_metric_none_verbose, feval=constant_metric)
    assert len(evals_result) == 1
2720
    assert "error" in evals_result["valid_0"]
2721

2722
    # custom objective, feval
2723
    # no default metric, only custom one
2724
    train_booster(params=params_dummy_obj_verbose, feval=constant_metric)
2725
2726
    assert len(evals_result["valid_0"]) == 1
    assert "error" in evals_result["valid_0"]
2727
2728

    # metric in params with custom one
2729
    train_booster(params=params_dummy_obj_metric_log_verbose, feval=constant_metric)
2730
2731
2732
    assert len(evals_result["valid_0"]) == 2
    assert "binary_logloss" in evals_result["valid_0"]
    assert "error" in evals_result["valid_0"]
2733
2734

    # multiple metrics in params with custom one
2735
    train_booster(params=params_dummy_obj_metric_multi_verbose, feval=constant_metric)
2736
2737
2738
2739
    assert len(evals_result["valid_0"]) == 3
    assert "binary_logloss" in evals_result["valid_0"]
    assert "binary_error" in evals_result["valid_0"]
    assert "error" in evals_result["valid_0"]
2740
2741

    # custom metric is evaluated despite 'None' is passed
2742
    train_booster(params=params_dummy_obj_metric_none_verbose, feval=constant_metric)
2743
    assert len(evals_result) == 1
2744
    assert "error" in evals_result["valid_0"]
2745
2746

    X, y = load_digits(n_class=3, return_X_y=True)
2747
    lgb_train = lgb.Dataset(X, y)
2748

2749
    obj_multi_aliases = ["multiclass", "softmax", "multiclassova", "multiclass_ova", "ova", "ovr"]
2750
    for obj_multi_alias in obj_multi_aliases:
2751
        # Custom objective replaces multiclass
2752
2753
2754
2755
2756
        params_obj_class_3_verbose = {"objective": obj_multi_alias, "num_class": 3, "verbose": -1}
        params_dummy_obj_class_3_verbose = {"objective": dummy_obj, "num_class": 3, "verbose": -1}
        params_dummy_obj_class_1_verbose = {"objective": dummy_obj, "num_class": 1, "verbose": -1}
        params_obj_verbose = {"objective": obj_multi_alias, "verbose": -1}
        params_dummy_obj_verbose = {"objective": dummy_obj, "verbose": -1}
2757
2758
2759
        # multiclass default metric
        res = get_cv_result(params_obj_class_3_verbose)
        assert len(res) == 2
2760
        assert "valid multi_logloss-mean" in res
2761
2762
2763
        # multiclass default metric with custom one
        res = get_cv_result(params_obj_class_3_verbose, feval=constant_metric)
        assert len(res) == 4
2764
2765
        assert "valid multi_logloss-mean" in res
        assert "valid error-mean" in res
2766
        # multiclass metric alias with custom one for custom objective
2767
        res = get_cv_result(params_dummy_obj_class_3_verbose, feval=constant_metric)
2768
        assert len(res) == 2
2769
        assert "valid error-mean" in res
2770
        # no metric for invalid class_num
2771
        res = get_cv_result(params_dummy_obj_class_1_verbose)
2772
2773
        assert len(res) == 0
        # custom metric for invalid class_num
2774
        res = get_cv_result(params_dummy_obj_class_1_verbose, feval=constant_metric)
2775
        assert len(res) == 2
2776
        assert "valid error-mean" in res
2777
2778
        # multiclass metric alias with custom one with invalid class_num
        with pytest.raises(lgb.basic.LightGBMError):
2779
            get_cv_result(params_dummy_obj_class_1_verbose, metrics=obj_multi_alias, feval=constant_metric)
2780
2781
2782
        # multiclass default metric without num_class
        with pytest.raises(lgb.basic.LightGBMError):
            get_cv_result(params_obj_verbose)
2783
        for metric_multi_alias in obj_multi_aliases + ["multi_logloss"]:
2784
2785
2786
            # multiclass metric alias
            res = get_cv_result(params_obj_class_3_verbose, metrics=metric_multi_alias)
            assert len(res) == 2
2787
            assert "valid multi_logloss-mean" in res
2788
        # multiclass metric
2789
        res = get_cv_result(params_obj_class_3_verbose, metrics="multi_error")
2790
        assert len(res) == 2
2791
        assert "valid multi_error-mean" in res
2792
2793
        # non-valid metric for multiclass objective
        with pytest.raises(lgb.basic.LightGBMError):
2794
2795
            get_cv_result(params_obj_class_3_verbose, metrics="binary_logloss")
    params_class_3_verbose = {"num_class": 3, "verbose": -1}
2796
2797
2798
2799
    # non-default num_class for default objective
    with pytest.raises(lgb.basic.LightGBMError):
        get_cv_result(params_class_3_verbose)
    # no metric with non-default num_class for custom objective
2800
    res = get_cv_result(params_dummy_obj_class_3_verbose)
2801
    assert len(res) == 0
2802
    for metric_multi_alias in obj_multi_aliases + ["multi_logloss"]:
2803
        # multiclass metric alias for custom objective
2804
        res = get_cv_result(params_dummy_obj_class_3_verbose, metrics=metric_multi_alias)
2805
        assert len(res) == 2
2806
        assert "valid multi_logloss-mean" in res
2807
    # multiclass metric for custom objective
2808
    res = get_cv_result(params_dummy_obj_class_3_verbose, metrics="multi_error")
2809
    assert len(res) == 2
2810
    assert "valid multi_error-mean" in res
2811
2812
    # binary metric with non-default num_class for custom objective
    with pytest.raises(lgb.basic.LightGBMError):
2813
        get_cv_result(params_dummy_obj_class_3_verbose, metrics="binary_error")
2814
2815
2816
2817
2818


def test_multiple_feval_train():
    X, y = load_breast_cancer(return_X_y=True)

2819
    params = {"verbose": -1, "objective": "binary", "metric": "binary_logloss"}
2820
2821
2822

    X_train, X_validation, y_train, y_validation = train_test_split(X, y, test_size=0.2)

2823
2824
    train_dataset = lgb.Dataset(data=X_train, label=y_train)
    validation_dataset = lgb.Dataset(data=X_validation, label=y_validation, reference=train_dataset)
2825
2826
2827
2828
2829
2830
2831
    evals_result = {}
    lgb.train(
        params=params,
        train_set=train_dataset,
        valid_sets=validation_dataset,
        num_boost_round=5,
        feval=[constant_metric, decreasing_metric],
2832
        callbacks=[lgb.record_evaluation(evals_result)],
2833
    )
2834

2835
2836
2837
2838
    assert len(evals_result["valid_0"]) == 3
    assert "binary_logloss" in evals_result["valid_0"]
    assert "error" in evals_result["valid_0"]
    assert "decreasing_metric" in evals_result["valid_0"]
2839
2840


2841
2842
def test_objective_callable_train_binary_classification():
    X, y = load_breast_cancer(return_X_y=True)
2843
    params = {"verbose": -1, "objective": logloss_obj, "learning_rate": 0.01}
2844
    train_dataset = lgb.Dataset(X, y)
2845
    booster = lgb.train(params=params, train_set=train_dataset, num_boost_round=20)
2846
2847
2848
    y_pred = logistic_sigmoid(booster.predict(X))
    logloss_error = log_loss(y, y_pred)
    rocauc_error = roc_auc_score(y, y_pred)
2849
    assert booster.params["objective"] == "none"
2850
2851
    assert logloss_error == pytest.approx(0.547907)
    assert rocauc_error == pytest.approx(0.995944)
2852
2853
2854
2855


def test_objective_callable_train_regression():
    X, y = make_synthetic_regression()
2856
    params = {"verbose": -1, "objective": mse_obj}
2857
    lgb_train = lgb.Dataset(X, y)
2858
    booster = lgb.train(params, lgb_train, num_boost_round=20)
2859
2860
    y_pred = booster.predict(X)
    mse_error = mean_squared_error(y, y_pred)
2861
    assert booster.params["objective"] == "none"
2862
    assert mse_error == pytest.approx(286.724194)
2863
2864
2865
2866


def test_objective_callable_cv_binary_classification():
    X, y = load_breast_cancer(return_X_y=True)
2867
    params = {"verbose": -1, "objective": logloss_obj, "learning_rate": 0.01}
2868
    train_dataset = lgb.Dataset(X, y)
2869
2870
2871
2872
    cv_res = lgb.cv(params, train_dataset, num_boost_round=20, nfold=3, return_cvbooster=True)
    cv_booster = cv_res["cvbooster"].boosters
    cv_logloss_errors = [log_loss(y, logistic_sigmoid(cb.predict(X))) < 0.56 for cb in cv_booster]
    cv_objs = [cb.params["objective"] == "none" for cb in cv_booster]
2873
2874
2875
2876
2877
2878
2879
    assert all(cv_objs)
    assert all(cv_logloss_errors)


def test_objective_callable_cv_regression():
    X, y = make_synthetic_regression()
    lgb_train = lgb.Dataset(X, y)
2880
2881
2882
2883
2884
    params = {"verbose": -1, "objective": mse_obj}
    cv_res = lgb.cv(params, lgb_train, num_boost_round=20, nfold=3, stratified=False, return_cvbooster=True)
    cv_booster = cv_res["cvbooster"].boosters
    cv_mse_errors = [mean_squared_error(y, cb.predict(X)) < 463 for cb in cv_booster]
    cv_objs = [cb.params["objective"] == "none" for cb in cv_booster]
2885
2886
2887
2888
    assert all(cv_objs)
    assert all(cv_mse_errors)


2889
2890
2891
def test_multiple_feval_cv():
    X, y = load_breast_cancer(return_X_y=True)

2892
    params = {"verbose": -1, "objective": "binary", "metric": "binary_logloss"}
2893

2894
    train_dataset = lgb.Dataset(data=X, label=y)
2895
2896

    cv_results = lgb.cv(
2897
2898
        params=params, train_set=train_dataset, num_boost_round=5, feval=[constant_metric, decreasing_metric]
    )
2899
2900
2901

    # Expect three metrics but mean and stdv for each metric
    assert len(cv_results) == 6
2902
2903
2904
2905
2906
2907
    assert "valid binary_logloss-mean" in cv_results
    assert "valid error-mean" in cv_results
    assert "valid decreasing_metric-mean" in cv_results
    assert "valid binary_logloss-stdv" in cv_results
    assert "valid error-stdv" in cv_results
    assert "valid decreasing_metric-stdv" in cv_results
2908
2909


2910
2911
2912
2913
2914
2915
def test_default_objective_and_metric():
    X, y = load_breast_cancer(return_X_y=True)
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2)
    train_dataset = lgb.Dataset(data=X_train, label=y_train)
    validation_dataset = lgb.Dataset(data=X_test, label=y_test, reference=train_dataset)
    evals_result = {}
2916
    params = {"verbose": -1}
2917
2918
2919
2920
2921
    lgb.train(
        params=params,
        train_set=train_dataset,
        valid_sets=validation_dataset,
        num_boost_round=5,
2922
        callbacks=[lgb.record_evaluation(evals_result)],
2923
2924
    )

2925
2926
2927
2928
    assert "valid_0" in evals_result
    assert len(evals_result["valid_0"]) == 1
    assert "l2" in evals_result["valid_0"]
    assert len(evals_result["valid_0"]["l2"]) == 5
2929
2930


2931
@pytest.mark.parametrize("use_weight", [True, False])
2932
def test_multiclass_custom_objective(use_weight):
2933
2934
    def custom_obj(y_pred, ds):
        y_true = ds.get_label()
2935
2936
2937
        weight = ds.get_weight()
        grad, hess = sklearn_multiclass_custom_objective(y_true, y_pred, weight)
        return grad, hess
2938
2939
2940

    centers = [[-4, -4], [4, 4], [-4, 4]]
    X, y = make_blobs(n_samples=1_000, centers=centers, random_state=42)
2941
    weight = np.full_like(y, 2)
2942
    ds = lgb.Dataset(X, y)
2943
2944
    if use_weight:
        ds.set_weight(weight)
2945
    params = {"objective": "multiclass", "num_class": 3, "num_leaves": 7}
2946
2947
2948
    builtin_obj_bst = lgb.train(params, ds, num_boost_round=10)
    builtin_obj_preds = builtin_obj_bst.predict(X)

2949
    params["objective"] = custom_obj
2950
    custom_obj_bst = lgb.train(params, ds, num_boost_round=10)
2951
2952
2953
2954
2955
    custom_obj_preds = softmax(custom_obj_bst.predict(X))

    np.testing.assert_allclose(builtin_obj_preds, custom_obj_preds, rtol=0.01)


2956
@pytest.mark.parametrize("use_weight", [True, False])
2957
def test_multiclass_custom_eval(use_weight):
2958
2959
    def custom_eval(y_pred, ds):
        y_true = ds.get_label()
2960
2961
        weight = ds.get_weight()  # weight is None when not set
        loss = log_loss(y_true, y_pred, sample_weight=weight)
2962
        return "custom_logloss", loss, False
2963
2964
2965

    centers = [[-4, -4], [4, 4], [-4, 4]]
    X, y = make_blobs(n_samples=1_000, centers=centers, random_state=42)
2966
2967
2968
2969
    weight = np.full_like(y, 2)
    X_train, X_valid, y_train, y_valid, weight_train, weight_valid = train_test_split(
        X, y, weight, test_size=0.2, random_state=0
    )
2970
2971
    train_ds = lgb.Dataset(X_train, y_train)
    valid_ds = lgb.Dataset(X_valid, y_valid, reference=train_ds)
2972
2973
2974
    if use_weight:
        train_ds.set_weight(weight_train)
        valid_ds.set_weight(weight_valid)
2975
    params = {"objective": "multiclass", "num_class": 3, "num_leaves": 7}
2976
2977
2978
2979
2980
2981
    eval_result = {}
    bst = lgb.train(
        params,
        train_ds,
        num_boost_round=10,
        valid_sets=[train_ds, valid_ds],
2982
        valid_names=["train", "valid"],
2983
2984
2985
2986
2987
        feval=custom_eval,
        callbacks=[lgb.record_evaluation(eval_result)],
        keep_training_booster=True,
    )

2988
2989
    for key, ds in zip(["train", "valid"], [train_ds, valid_ds]):
        np.testing.assert_allclose(eval_result[key]["multi_logloss"], eval_result[key]["custom_logloss"])
2990
        _, metric, value, _ = bst.eval(ds, key, feval=custom_eval)[1]  # first element is multi_logloss
2991
        assert metric == "custom_logloss"
2992
2993
2994
        np.testing.assert_allclose(value, eval_result[key][metric][-1])


2995
@pytest.mark.skipif(psutil.virtual_memory().available / 1024 / 1024 / 1024 < 3, reason="not enough RAM")
2996
def test_model_size():
2997
    X, y = make_synthetic_regression()
2998
    data = lgb.Dataset(X, y)
2999
    bst = lgb.train({"verbose": -1}, data, num_boost_round=2)
3000
3001
    y_pred = bst.predict(X)
    model_str = bst.model_to_string()
3002
    one_tree = model_str[model_str.find("Tree=1") : model_str.find("end of trees")]
3003
    one_tree_size = len(one_tree)
3004
    one_tree = one_tree.replace("Tree=1", "Tree={}")
3005
3006
3007
    multiplier = 100
    total_trees = multiplier + 2
    try:
3008
3009
        before_tree_sizes = model_str[: model_str.find("tree_sizes")]
        trees = model_str[model_str.find("Tree=0") : model_str.find("end of trees")]
3010
        more_trees = (one_tree * multiplier).format(*range(2, total_trees))
3011
        after_trees = model_str[model_str.find("end of trees") :]
3012
3013
        num_end_spaces = 2**31 - one_tree_size * total_trees
        new_model_str = f"{before_tree_sizes}\n\n{trees}{more_trees}{after_trees}{'':{num_end_spaces}}"
3014
        assert len(new_model_str) > 2**31
3015
        bst.model_from_string(new_model_str)
3016
3017
3018
3019
        assert bst.num_trees() == total_trees
        y_pred_new = bst.predict(X, num_iteration=2)
        np.testing.assert_allclose(y_pred, y_pred_new)
    except MemoryError:
3020
        pytest.skipTest("not enough RAM")
3021
3022


3023
3024
3025
@pytest.mark.skipif(
    getenv("TASK", "") == "cuda", reason="Skip due to differences in implementation details of CUDA version"
)
3026
def test_get_split_value_histogram(rng_fixed_seed):
3027
3028
3029
3030
    X, y = make_synthetic_regression()
    X = np.repeat(X, 3, axis=0)
    y = np.repeat(y, 3, axis=0)
    X[:, 2] = np.random.default_rng(0).integers(0, 20, size=X.shape[0])
3031
    lgb_train = lgb.Dataset(X, y, categorical_feature=[2])
3032
    gbm = lgb.train({"verbose": -1}, lgb_train, num_boost_round=20)
3033
    # test XGBoost-style return value
3034
    params = {"feature": 0, "xgboost_style": True}
3035
3036
    assert gbm.get_split_value_histogram(**params).shape == (12, 2)
    assert gbm.get_split_value_histogram(bins=999, **params).shape == (12, 2)
3037
3038
3039
3040
    assert gbm.get_split_value_histogram(bins=-1, **params).shape == (1, 2)
    assert gbm.get_split_value_histogram(bins=0, **params).shape == (1, 2)
    assert gbm.get_split_value_histogram(bins=1, **params).shape == (1, 2)
    assert gbm.get_split_value_histogram(bins=2, **params).shape == (2, 2)
3041
3042
    assert gbm.get_split_value_histogram(bins=6, **params).shape == (6, 2)
    assert gbm.get_split_value_histogram(bins=7, **params).shape == (7, 2)
3043
3044
3045
    if lgb.compat.PANDAS_INSTALLED:
        np.testing.assert_allclose(
            gbm.get_split_value_histogram(0, xgboost_style=True).values,
3046
            gbm.get_split_value_histogram(gbm.feature_name()[0], xgboost_style=True).values,
3047
3048
3049
        )
        np.testing.assert_allclose(
            gbm.get_split_value_histogram(X.shape[-1] - 1, xgboost_style=True).values,
3050
            gbm.get_split_value_histogram(gbm.feature_name()[X.shape[-1] - 1], xgboost_style=True).values,
3051
3052
3053
3054
        )
    else:
        np.testing.assert_allclose(
            gbm.get_split_value_histogram(0, xgboost_style=True),
3055
            gbm.get_split_value_histogram(gbm.feature_name()[0], xgboost_style=True),
3056
3057
3058
        )
        np.testing.assert_allclose(
            gbm.get_split_value_histogram(X.shape[-1] - 1, xgboost_style=True),
3059
            gbm.get_split_value_histogram(gbm.feature_name()[X.shape[-1] - 1], xgboost_style=True),
3060
3061
3062
        )
    # test numpy-style return value
    hist, bins = gbm.get_split_value_histogram(0)
3063
3064
    assert len(hist) == 20
    assert len(bins) == 21
3065
3066
3067
3068
3069
3070
3071
3072
3073
3074
3075
3076
3077
3078
3079
3080
3081
3082
3083
3084
3085
3086
3087
3088
3089
3090
3091
3092
    hist, bins = gbm.get_split_value_histogram(0, bins=999)
    assert len(hist) == 999
    assert len(bins) == 1000
    with pytest.raises(ValueError):
        gbm.get_split_value_histogram(0, bins=-1)
    with pytest.raises(ValueError):
        gbm.get_split_value_histogram(0, bins=0)
    hist, bins = gbm.get_split_value_histogram(0, bins=1)
    assert len(hist) == 1
    assert len(bins) == 2
    hist, bins = gbm.get_split_value_histogram(0, bins=2)
    assert len(hist) == 2
    assert len(bins) == 3
    hist, bins = gbm.get_split_value_histogram(0, bins=6)
    assert len(hist) == 6
    assert len(bins) == 7
    hist, bins = gbm.get_split_value_histogram(0, bins=7)
    assert len(hist) == 7
    assert len(bins) == 8
    hist_idx, bins_idx = gbm.get_split_value_histogram(0)
    hist_name, bins_name = gbm.get_split_value_histogram(gbm.feature_name()[0])
    np.testing.assert_array_equal(hist_idx, hist_name)
    np.testing.assert_allclose(bins_idx, bins_name)
    hist_idx, bins_idx = gbm.get_split_value_histogram(X.shape[-1] - 1)
    hist_name, bins_name = gbm.get_split_value_histogram(gbm.feature_name()[X.shape[-1] - 1])
    np.testing.assert_array_equal(hist_idx, hist_name)
    np.testing.assert_allclose(bins_idx, bins_name)
    # test bins string type
3093
3094
    hist_vals, bin_edges = gbm.get_split_value_histogram(0, bins="auto")
    hist = gbm.get_split_value_histogram(0, bins="auto", xgboost_style=True)
3095
3096
    if lgb.compat.PANDAS_INSTALLED:
        mask = hist_vals > 0
3097
3098
        np.testing.assert_array_equal(hist_vals[mask], hist["Count"].values)
        np.testing.assert_allclose(bin_edges[1:][mask], hist["SplitValue"].values)
3099
3100
3101
3102
    else:
        mask = hist_vals > 0
        np.testing.assert_array_equal(hist_vals[mask], hist[:, 1])
        np.testing.assert_allclose(bin_edges[1:][mask], hist[:, 0])
3103
3104
3105
    # test histogram is disabled for categorical features
    with pytest.raises(lgb.basic.LightGBMError):
        gbm.get_split_value_histogram(2)
3106
3107


3108
3109
3110
@pytest.mark.skipif(
    getenv("TASK", "") == "cuda", reason="Skip due to differences in implementation details of CUDA version"
)
3111
def test_early_stopping_for_only_first_metric():
3112
    def metrics_combination_train_regression(valid_sets, metric_list, assumed_iteration, first_metric_only, feval=None):
3113
        params = {
3114
3115
3116
3117
3118
3119
            "objective": "regression",
            "learning_rate": 1.1,
            "num_leaves": 10,
            "metric": metric_list,
            "verbose": -1,
            "seed": 123,
3120
        }
3121
3122
3123
3124
3125
3126
        gbm = lgb.train(
            params,
            lgb_train,
            num_boost_round=25,
            valid_sets=valid_sets,
            feval=feval,
3127
            callbacks=[lgb.early_stopping(stopping_rounds=5, first_metric_only=first_metric_only)],
3128
        )
3129
        assert assumed_iteration == gbm.best_iteration
3130

3131
3132
3133
    def metrics_combination_cv_regression(
        metric_list, assumed_iteration, first_metric_only, eval_train_metric, feval=None
    ):
3134
        params = {
3135
3136
3137
3138
3139
3140
3141
            "objective": "regression",
            "learning_rate": 0.9,
            "num_leaves": 10,
            "metric": metric_list,
            "verbose": -1,
            "seed": 123,
            "gpu_use_dp": True,
3142
        }
3143
3144
3145
3146
3147
3148
3149
        ret = lgb.cv(
            params,
            train_set=lgb_train,
            num_boost_round=25,
            stratified=False,
            feval=feval,
            callbacks=[lgb.early_stopping(stopping_rounds=5, first_metric_only=first_metric_only)],
3150
            eval_train_metric=eval_train_metric,
3151
        )
3152
3153
        assert assumed_iteration == len(ret[list(ret.keys())[0]])

3154
    X, y = make_synthetic_regression()
3155
3156
3157
3158
3159
3160
3161
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2, random_state=42)
    X_test1, X_test2, y_test1, y_test2 = train_test_split(X_test, y_test, test_size=0.5, random_state=73)
    lgb_train = lgb.Dataset(X_train, y_train)
    lgb_valid1 = lgb.Dataset(X_test1, y_test1, reference=lgb_train)
    lgb_valid2 = lgb.Dataset(X_test2, y_test2, reference=lgb_train)

    iter_valid1_l1 = 3
3162
3163
    iter_valid1_l2 = 3
    iter_valid2_l1 = 3
3164
    iter_valid2_l2 = 15
3165
    assert len({iter_valid1_l1, iter_valid1_l2, iter_valid2_l1, iter_valid2_l2}) == 2
3166
3167
3168
3169
    iter_min_l1 = min([iter_valid1_l1, iter_valid2_l1])
    iter_min_l2 = min([iter_valid1_l2, iter_valid2_l2])
    iter_min_valid1 = min([iter_valid1_l1, iter_valid1_l2])

3170
3171
    iter_cv_l1 = 15
    iter_cv_l2 = 13
3172
    assert len({iter_cv_l1, iter_cv_l2}) == 2
3173
3174
3175
3176
3177
3178
3179
    iter_cv_min = min([iter_cv_l1, iter_cv_l2])

    # test for lgb.train
    metrics_combination_train_regression(lgb_valid1, [], iter_valid1_l2, False)
    metrics_combination_train_regression(lgb_valid1, [], iter_valid1_l2, True)
    metrics_combination_train_regression(lgb_valid1, None, iter_valid1_l2, False)
    metrics_combination_train_regression(lgb_valid1, None, iter_valid1_l2, True)
3180
3181
3182
3183
3184
3185
    metrics_combination_train_regression(lgb_valid1, "l2", iter_valid1_l2, True)
    metrics_combination_train_regression(lgb_valid1, "l1", iter_valid1_l1, True)
    metrics_combination_train_regression(lgb_valid1, ["l2", "l1"], iter_valid1_l2, True)
    metrics_combination_train_regression(lgb_valid1, ["l1", "l2"], iter_valid1_l1, True)
    metrics_combination_train_regression(lgb_valid1, ["l2", "l1"], iter_min_valid1, False)
    metrics_combination_train_regression(lgb_valid1, ["l1", "l2"], iter_min_valid1, False)
3186
3187

    # test feval for lgb.train
3188
3189
3190
3191
3192
3193
3194
3195
3196
3197
3198
3199
3200
3201
3202
3203
3204
3205
3206
3207
3208
    metrics_combination_train_regression(
        lgb_valid1,
        "None",
        1,
        False,
        feval=lambda preds, train_data: [decreasing_metric(preds, train_data), constant_metric(preds, train_data)],
    )
    metrics_combination_train_regression(
        lgb_valid1,
        "None",
        25,
        True,
        feval=lambda preds, train_data: [decreasing_metric(preds, train_data), constant_metric(preds, train_data)],
    )
    metrics_combination_train_regression(
        lgb_valid1,
        "None",
        1,
        True,
        feval=lambda preds, train_data: [constant_metric(preds, train_data), decreasing_metric(preds, train_data)],
    )
3209
3210

    # test with two valid data for lgb.train
3211
3212
3213
3214
    metrics_combination_train_regression([lgb_valid1, lgb_valid2], ["l2", "l1"], iter_min_l2, True)
    metrics_combination_train_regression([lgb_valid2, lgb_valid1], ["l2", "l1"], iter_min_l2, True)
    metrics_combination_train_regression([lgb_valid1, lgb_valid2], ["l1", "l2"], iter_min_l1, True)
    metrics_combination_train_regression([lgb_valid2, lgb_valid1], ["l1", "l2"], iter_min_l1, True)
3215
3216
3217

    # test for lgb.cv
    metrics_combination_cv_regression(None, iter_cv_l2, True, False)
3218
3219
3220
3221
3222
3223
    metrics_combination_cv_regression("l2", iter_cv_l2, True, False)
    metrics_combination_cv_regression("l1", iter_cv_l1, True, False)
    metrics_combination_cv_regression(["l2", "l1"], iter_cv_l2, True, False)
    metrics_combination_cv_regression(["l1", "l2"], iter_cv_l1, True, False)
    metrics_combination_cv_regression(["l2", "l1"], iter_cv_min, False, False)
    metrics_combination_cv_regression(["l1", "l2"], iter_cv_min, False, False)
3224
    metrics_combination_cv_regression(None, iter_cv_l2, True, True)
3225
3226
3227
3228
3229
3230
    metrics_combination_cv_regression("l2", iter_cv_l2, True, True)
    metrics_combination_cv_regression("l1", iter_cv_l1, True, True)
    metrics_combination_cv_regression(["l2", "l1"], iter_cv_l2, True, True)
    metrics_combination_cv_regression(["l1", "l2"], iter_cv_l1, True, True)
    metrics_combination_cv_regression(["l2", "l1"], iter_cv_min, False, True)
    metrics_combination_cv_regression(["l1", "l2"], iter_cv_min, False, True)
3231
3232

    # test feval for lgb.cv
3233
3234
3235
3236
3237
3238
3239
3240
3241
3242
3243
3244
3245
3246
3247
3248
3249
3250
3251
3252
3253
    metrics_combination_cv_regression(
        "None",
        1,
        False,
        False,
        feval=lambda preds, train_data: [decreasing_metric(preds, train_data), constant_metric(preds, train_data)],
    )
    metrics_combination_cv_regression(
        "None",
        25,
        True,
        False,
        feval=lambda preds, train_data: [decreasing_metric(preds, train_data), constant_metric(preds, train_data)],
    )
    metrics_combination_cv_regression(
        "None",
        1,
        True,
        False,
        feval=lambda preds, train_data: [constant_metric(preds, train_data), decreasing_metric(preds, train_data)],
    )
3254
3255
3256
3257
3258
3259


def test_node_level_subcol():
    X, y = load_breast_cancer(return_X_y=True)
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
    params = {
3260
3261
3262
3263
3264
        "objective": "binary",
        "metric": "binary_logloss",
        "feature_fraction_bynode": 0.8,
        "feature_fraction": 1.0,
        "verbose": -1,
3265
3266
3267
3268
    }
    lgb_train = lgb.Dataset(X_train, y_train)
    lgb_eval = lgb.Dataset(X_test, y_test, reference=lgb_train)
    evals_result = {}
3269
    gbm = lgb.train(
3270
        params, lgb_train, num_boost_round=25, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
3271
    )
3272
3273
    ret = log_loss(y_test, gbm.predict(X_test))
    assert ret < 0.14
3274
3275
    assert evals_result["valid_0"]["binary_logloss"][-1] == pytest.approx(ret)
    params["feature_fraction"] = 0.5
3276
3277
3278
3279
3280
    gbm2 = lgb.train(params, lgb_train, num_boost_round=25)
    ret2 = log_loss(y_test, gbm2.predict(X_test))
    assert ret != ret2


3281
3282
3283
3284
3285
3286
3287
3288
3289
3290
3291
def test_forced_split_feature_indices(tmp_path):
    X, y = make_synthetic_regression()
    forced_split = {
        "feature": 0,
        "threshold": 0.5,
        "left": {"feature": X.shape[1], "threshold": 0.5},
    }
    tmp_split_file = tmp_path / "forced_split.json"
    with open(tmp_split_file, "w") as f:
        f.write(json.dumps(forced_split))
    lgb_train = lgb.Dataset(X, y)
3292
    params = {"objective": "regression", "forcedsplits_filename": tmp_split_file}
3293
    with pytest.raises(lgb.basic.LightGBMError, match="Forced splits file includes feature index"):
3294
        lgb.train(params, lgb_train)
3295
3296


3297
def test_forced_bins():
3298
    x = np.empty((100, 2))
3299
3300
3301
    x[:, 0] = np.arange(0, 1, 0.01)
    x[:, 1] = -np.arange(0, 1, 0.01)
    y = np.arange(0, 1, 0.01)
3302
3303
3304
3305
3306
3307
3308
3309
3310
    forcedbins_filename = Path(__file__).absolute().parents[2] / "examples" / "regression" / "forced_bins.json"
    params = {
        "objective": "regression_l1",
        "max_bin": 5,
        "forcedbins_filename": forcedbins_filename,
        "num_leaves": 2,
        "min_data_in_leaf": 1,
        "verbose": -1,
    }
3311
3312
3313
3314
3315
3316
3317
3318
3319
3320
    lgb_x = lgb.Dataset(x, label=y)
    est = lgb.train(params, lgb_x, num_boost_round=20)
    new_x = np.zeros((3, x.shape[1]))
    new_x[:, 0] = [0.31, 0.37, 0.41]
    predicted = est.predict(new_x)
    assert len(np.unique(predicted)) == 3
    new_x[:, 0] = [0, 0, 0]
    new_x[:, 1] = [-0.9, -0.6, -0.3]
    predicted = est.predict(new_x)
    assert len(np.unique(predicted)) == 1
3321
    params["forcedbins_filename"] = ""
3322
3323
3324
3325
    lgb_x = lgb.Dataset(x, label=y)
    est = lgb.train(params, lgb_x, num_boost_round=20)
    predicted = est.predict(new_x)
    assert len(np.unique(predicted)) == 3
3326
3327
    params["forcedbins_filename"] = (
        Path(__file__).absolute().parents[2] / "examples" / "regression" / "forced_bins2.json"
3328
    )
3329
    params["max_bin"] = 11
3330
3331
3332
3333
3334
3335
3336
3337
3338
3339
    lgb_x = lgb.Dataset(x[:, :1], label=y)
    est = lgb.train(params, lgb_x, num_boost_round=50)
    predicted = est.predict(x[1:, :1])
    _, counts = np.unique(predicted, return_counts=True)
    assert min(counts) >= 9
    assert max(counts) <= 11


def test_binning_same_sign():
    # test that binning works properly for features with only positive or only negative values
3340
    x = np.empty((99, 2))
3341
3342
3343
    x[:, 0] = np.arange(0.01, 1, 0.01)
    x[:, 1] = -np.arange(0.01, 1, 0.01)
    y = np.arange(0.01, 1, 0.01)
3344
3345
3346
3347
3348
3349
3350
3351
    params = {
        "objective": "regression_l1",
        "max_bin": 5,
        "num_leaves": 2,
        "min_data_in_leaf": 1,
        "verbose": -1,
        "seed": 0,
    }
3352
3353
3354
3355
3356
3357
3358
3359
3360
3361
3362
3363
3364
3365
    lgb_x = lgb.Dataset(x, label=y)
    est = lgb.train(params, lgb_x, num_boost_round=20)
    new_x = np.zeros((3, 2))
    new_x[:, 0] = [-1, 0, 1]
    predicted = est.predict(new_x)
    assert predicted[0] == pytest.approx(predicted[1])
    assert predicted[1] != pytest.approx(predicted[2])
    new_x = np.zeros((3, 2))
    new_x[:, 1] = [-1, 0, 1]
    predicted = est.predict(new_x)
    assert predicted[0] != pytest.approx(predicted[1])
    assert predicted[1] == pytest.approx(predicted[2])


3366
def test_dataset_update_params(rng):
3367
3368
3369
3370
3371
3372
3373
3374
3375
3376
3377
3378
3379
3380
3381
3382
3383
3384
3385
3386
3387
3388
3389
3390
3391
3392
3393
3394
3395
3396
3397
3398
3399
3400
3401
3402
3403
3404
3405
3406
3407
3408
3409
3410
3411
3412
3413
3414
    default_params = {
        "max_bin": 100,
        "max_bin_by_feature": [20, 10],
        "bin_construct_sample_cnt": 10000,
        "min_data_in_bin": 1,
        "use_missing": False,
        "zero_as_missing": False,
        "categorical_feature": [0],
        "feature_pre_filter": True,
        "pre_partition": False,
        "enable_bundle": True,
        "data_random_seed": 0,
        "is_enable_sparse": True,
        "header": True,
        "two_round": True,
        "label_column": 0,
        "weight_column": 0,
        "group_column": 0,
        "ignore_column": 0,
        "min_data_in_leaf": 10,
        "linear_tree": False,
        "precise_float_parser": True,
        "verbose": -1,
    }
    unchangeable_params = {
        "max_bin": 150,
        "max_bin_by_feature": [30, 5],
        "bin_construct_sample_cnt": 5000,
        "min_data_in_bin": 2,
        "use_missing": True,
        "zero_as_missing": True,
        "categorical_feature": [0, 1],
        "feature_pre_filter": False,
        "pre_partition": True,
        "enable_bundle": False,
        "data_random_seed": 1,
        "is_enable_sparse": False,
        "header": False,
        "two_round": False,
        "label_column": 1,
        "weight_column": 1,
        "group_column": 1,
        "ignore_column": 1,
        "forcedbins_filename": "/some/path/forcedbins.json",
        "min_data_in_leaf": 2,
        "linear_tree": True,
        "precise_float_parser": False,
    }
3415
3416
    X = rng.uniform(size=(100, 2))
    y = rng.uniform(size=(100,))
3417
3418
3419
3420
3421
3422
3423
3424
3425
3426
3427
3428
3429
3430
3431
3432
3433
3434
3435
3436
3437
3438
3439
3440
3441
3442
3443
3444

    # decreasing without freeing raw data is allowed
    lgb_data = lgb.Dataset(X, y, params=default_params, free_raw_data=False).construct()
    default_params["min_data_in_leaf"] -= 1
    lgb.train(default_params, lgb_data, num_boost_round=3)

    # decreasing before lazy init is allowed
    lgb_data = lgb.Dataset(X, y, params=default_params)
    default_params["min_data_in_leaf"] -= 1
    lgb.train(default_params, lgb_data, num_boost_round=3)

    # increasing is allowed
    default_params["min_data_in_leaf"] += 2
    lgb.train(default_params, lgb_data, num_boost_round=3)

    # decreasing with disabled filter is allowed
    default_params["feature_pre_filter"] = False
    lgb_data = lgb.Dataset(X, y, params=default_params).construct()
    default_params["min_data_in_leaf"] -= 4
    lgb.train(default_params, lgb_data, num_boost_round=3)

    # decreasing with enabled filter is disallowed;
    # also changes of other params are disallowed
    default_params["feature_pre_filter"] = True
    lgb_data = lgb.Dataset(X, y, params=default_params).construct()
    for key, value in unchangeable_params.items():
        new_params = default_params.copy()
        new_params[key] = value
3445
3446
3447
3448
        if key != "forcedbins_filename":
            param_name = key
        else:
            param_name = "forced bins"
3449
3450
3451
3452
3453
        err_msg = (
            "Reducing `min_data_in_leaf` with `feature_pre_filter=true` may cause *"
            if key == "min_data_in_leaf"
            else f"Cannot change {param_name} *"
        )
3454
3455
3456
3457
        with np.testing.assert_raises_regex(lgb.basic.LightGBMError, err_msg):
            lgb.train(new_params, lgb_data, num_boost_round=3)


3458
def test_dataset_params_with_reference(rng):
3459
    default_params = {"max_bin": 100}
3460
3461
3462
3463
    X = rng.uniform(size=(100, 2))
    y = rng.uniform(size=(100,))
    X_val = rng.uniform(size=(100, 2))
    y_val = rng.uniform(size=(100,))
3464
3465
3466
3467
3468
3469
3470
3471
3472
    lgb_train = lgb.Dataset(X, y, params=default_params, free_raw_data=False).construct()
    lgb_val = lgb.Dataset(X_val, y_val, reference=lgb_train, free_raw_data=False).construct()
    assert lgb_train.get_params() == default_params
    assert lgb_val.get_params() == default_params
    lgb.train(default_params, lgb_train, valid_sets=[lgb_val])


def test_extra_trees():
    # check extra trees increases regularization
3473
    X, y = make_synthetic_regression()
3474
    lgb_x = lgb.Dataset(X, label=y)
3475
    params = {"objective": "regression", "num_leaves": 32, "verbose": -1, "extra_trees": False, "seed": 0}
3476
3477
3478
    est = lgb.train(params, lgb_x, num_boost_round=10)
    predicted = est.predict(X)
    err = mean_squared_error(y, predicted)
3479
    params["extra_trees"] = True
3480
3481
3482
3483
3484
3485
3486
3487
    est = lgb.train(params, lgb_x, num_boost_round=10)
    predicted_new = est.predict(X)
    err_new = mean_squared_error(y, predicted_new)
    assert err < err_new


def test_path_smoothing():
    # check path smoothing increases regularization
3488
    X, y = make_synthetic_regression()
3489
    lgb_x = lgb.Dataset(X, label=y)
3490
    params = {"objective": "regression", "num_leaves": 32, "verbose": -1, "seed": 0}
3491
3492
3493
    est = lgb.train(params, lgb_x, num_boost_round=10)
    predicted = est.predict(X)
    err = mean_squared_error(y, predicted)
3494
    params["path_smooth"] = 1
3495
3496
3497
3498
3499
3500
    est = lgb.train(params, lgb_x, num_boost_round=10)
    predicted_new = est.predict(X)
    err_new = mean_squared_error(y, predicted_new)
    assert err < err_new


3501
def test_trees_to_dataframe(rng):
3502
3503
3504
    pytest.importorskip("pandas")

    def _imptcs_to_numpy(X, impcts_dict):
3505
3506
        cols = [f"Column_{i}" for i in range(X.shape[1])]
        return [impcts_dict.get(col, 0.0) for col in cols]
3507
3508
3509
3510
3511
3512

    X, y = load_breast_cancer(return_X_y=True)
    data = lgb.Dataset(X, label=y)
    num_trees = 10
    bst = lgb.train({"objective": "binary", "verbose": -1}, data, num_trees)
    tree_df = bst.trees_to_dataframe()
3513
    split_dict = tree_df[~tree_df["split_gain"].isnull()].groupby("split_feature").size().to_dict()
3514

3515
    gains_dict = tree_df.groupby("split_feature")["split_gain"].sum().to_dict()
3516
3517
3518

    tree_split = _imptcs_to_numpy(X, split_dict)
    tree_gains = _imptcs_to_numpy(X, gains_dict)
3519
3520
3521
3522
    mod_split = bst.feature_importance("split")
    mod_gains = bst.feature_importance("gain")
    num_trees_from_df = tree_df["tree_index"].nunique()
    obs_counts_from_df = tree_df.loc[tree_df["node_depth"] == 1, "count"].values
3523
3524
3525
3526
3527
3528
3529
3530

    np.testing.assert_equal(tree_split, mod_split)
    np.testing.assert_allclose(tree_gains, mod_gains)
    assert num_trees_from_df == num_trees
    np.testing.assert_equal(obs_counts_from_df, len(y))

    # test edge case with one leaf
    X = np.ones((10, 2))
3531
    y = rng.uniform(size=(10,))
3532
3533
3534
3535
3536
    data = lgb.Dataset(X, label=y)
    bst = lgb.train({"objective": "binary", "verbose": -1}, data, num_trees)
    tree_df = bst.trees_to_dataframe()

    assert len(tree_df) == 1
3537
3538
3539
3540
3541
3542
3543
3544
3545
3546
3547
3548
3549
3550
3551
3552
3553
    assert tree_df.loc[0, "tree_index"] == 0
    assert tree_df.loc[0, "node_depth"] == 1
    assert tree_df.loc[0, "node_index"] == "0-L0"
    assert tree_df.loc[0, "value"] is not None
    for col in (
        "left_child",
        "right_child",
        "parent_index",
        "split_feature",
        "split_gain",
        "threshold",
        "decision_type",
        "missing_direction",
        "missing_type",
        "weight",
        "count",
    ):
3554
3555
3556
3557
        assert tree_df.loc[0, col] is None


def test_interaction_constraints():
3558
    X, y = make_synthetic_regression(n_samples=200)
3559
3560
3561
    num_features = X.shape[1]
    train_data = lgb.Dataset(X, label=y)
    # check that constraint containing all features is equivalent to no constraint
3562
    params = {"verbose": -1, "seed": 0}
3563
3564
    est = lgb.train(params, train_data, num_boost_round=10)
    pred1 = est.predict(X)
3565
    est = lgb.train(dict(params, interaction_constraints=[list(range(num_features))]), train_data, num_boost_round=10)
3566
3567
3568
    pred2 = est.predict(X)
    np.testing.assert_allclose(pred1, pred2)
    # check that constraint partitioning the features reduces train accuracy
3569
    est = lgb.train(dict(params, interaction_constraints=[[0, 2], [1, 3]]), train_data, num_boost_round=10)
3570
3571
3572
    pred3 = est.predict(X)
    assert mean_squared_error(y, pred1) < mean_squared_error(y, pred3)
    # check that constraints consisting of single features reduce accuracy further
3573
3574
3575
    est = lgb.train(
        dict(params, interaction_constraints=[[i] for i in range(num_features)]), train_data, num_boost_round=10
    )
3576
3577
3578
3579
3580
3581
    pred4 = est.predict(X)
    assert mean_squared_error(y, pred3) < mean_squared_error(y, pred4)
    # test that interaction constraints work when not all features are used
    X = np.concatenate([np.zeros((X.shape[0], 1)), X], axis=1)
    num_features = X.shape[1]
    train_data = lgb.Dataset(X, label=y)
3582
3583
3584
3585
3586
    est = lgb.train(
        dict(params, interaction_constraints=[[0] + list(range(2, num_features)), [1] + list(range(2, num_features))]),
        train_data,
        num_boost_round=10,
    )
3587
3588


3589
def test_linear_trees_num_threads(rng_fixed_seed):
3590
3591
    # check that number of threads does not affect result
    x = np.arange(0, 1000, 0.1)
3592
    y = 2 * x + rng_fixed_seed.normal(loc=0, scale=0.1, size=(len(x),))
3593
3594
    x = x[:, np.newaxis]
    lgb_train = lgb.Dataset(x, label=y)
3595
    params = {"verbose": -1, "objective": "regression", "seed": 0, "linear_tree": True, "num_threads": 2}
3596
3597
3598
3599
3600
3601
3602
3603
    est = lgb.train(params, lgb_train, num_boost_round=100)
    pred1 = est.predict(x)
    params["num_threads"] = 4
    est = lgb.train(params, lgb_train, num_boost_round=100)
    pred2 = est.predict(x)
    np.testing.assert_allclose(pred1, pred2)


3604
def test_linear_trees(tmp_path, rng_fixed_seed):
3605
3606
    # check that setting linear_tree=True fits better than ordinary trees when data has linear relationship
    x = np.arange(0, 100, 0.1)
3607
    y = 2 * x + rng_fixed_seed.normal(0, 0.1, len(x))
3608
3609
    x = x[:, np.newaxis]
    lgb_train = lgb.Dataset(x, label=y)
3610
    params = {"verbose": -1, "metric": "mse", "seed": 0, "num_leaves": 2}
3611
3612
3613
3614
    est = lgb.train(params, lgb_train, num_boost_round=10)
    pred1 = est.predict(x)
    lgb_train = lgb.Dataset(x, label=y)
    res = {}
3615
    est = lgb.train(
3616
        dict(params, linear_tree=True),
3617
3618
3619
        lgb_train,
        num_boost_round=10,
        valid_sets=[lgb_train],
3620
3621
        valid_names=["train"],
        callbacks=[lgb.record_evaluation(res)],
3622
    )
3623
    pred2 = est.predict(x)
3624
    assert res["train"]["l2"][-1] == pytest.approx(mean_squared_error(y, pred2), abs=1e-1)
3625
3626
3627
3628
3629
3630
3631
3632
    assert mean_squared_error(y, pred2) < mean_squared_error(y, pred1)
    # test again with nans in data
    x[:10] = np.nan
    lgb_train = lgb.Dataset(x, label=y)
    est = lgb.train(params, lgb_train, num_boost_round=10)
    pred1 = est.predict(x)
    lgb_train = lgb.Dataset(x, label=y)
    res = {}
3633
    est = lgb.train(
3634
        dict(params, linear_tree=True),
3635
3636
3637
        lgb_train,
        num_boost_round=10,
        valid_sets=[lgb_train],
3638
3639
        valid_names=["train"],
        callbacks=[lgb.record_evaluation(res)],
3640
    )
3641
    pred2 = est.predict(x)
3642
    assert res["train"]["l2"][-1] == pytest.approx(mean_squared_error(y, pred2), abs=1e-1)
3643
3644
3645
    assert mean_squared_error(y, pred2) < mean_squared_error(y, pred1)
    # test again with bagging
    res = {}
3646
    est = lgb.train(
3647
        dict(params, linear_tree=True, subsample=0.8, bagging_freq=1),
3648
3649
3650
        lgb_train,
        num_boost_round=10,
        valid_sets=[lgb_train],
3651
3652
        valid_names=["train"],
        callbacks=[lgb.record_evaluation(res)],
3653
    )
3654
    pred = est.predict(x)
3655
    assert res["train"]["l2"][-1] == pytest.approx(mean_squared_error(y, pred), abs=1e-1)
3656
3657
3658
3659
3660
3661
    # test with a feature that has only one non-nan value
    x = np.concatenate([np.ones([x.shape[0], 1]), x], 1)
    x[500:, 1] = np.nan
    y[500:] += 10
    lgb_train = lgb.Dataset(x, label=y)
    res = {}
3662
    est = lgb.train(
3663
        dict(params, linear_tree=True, subsample=0.8, bagging_freq=1),
3664
3665
3666
        lgb_train,
        num_boost_round=10,
        valid_sets=[lgb_train],
3667
3668
        valid_names=["train"],
        callbacks=[lgb.record_evaluation(res)],
3669
    )
3670
    pred = est.predict(x)
3671
    assert res["train"]["l2"][-1] == pytest.approx(mean_squared_error(y, pred), abs=1e-1)
3672
3673
3674
3675
    # test with a categorical feature
    x[:250, 0] = 0
    y[:250] += 10
    lgb_train = lgb.Dataset(x, label=y)
3676
3677
3678
3679
3680
3681
    est = lgb.train(
        dict(params, linear_tree=True, subsample=0.8, bagging_freq=1),
        lgb_train,
        num_boost_round=10,
        categorical_feature=[0],
    )
3682
3683
3684
3685
3686
3687
3688
3689
3690
3691
3692
3693
3694
3695
3696
3697
3698
3699
3700
3701
    # test refit: same results on same data
    est2 = est.refit(x, label=y)
    p1 = est.predict(x)
    p2 = est2.predict(x)
    assert np.mean(np.abs(p1 - p2)) < 2

    # test refit with save and load
    temp_model = str(tmp_path / "temp_model.txt")
    est.save_model(temp_model)
    est2 = lgb.Booster(model_file=temp_model)
    est2 = est2.refit(x, label=y)
    p1 = est.predict(x)
    p2 = est2.predict(x)
    assert np.mean(np.abs(p1 - p2)) < 2
    # test refit: different results training on different data
    est3 = est.refit(x[:100, :], label=y[:100])
    p3 = est3.predict(x)
    assert np.mean(np.abs(p2 - p1)) > np.abs(np.max(p3 - p1))
    # test when num_leaves - 1 < num_features and when num_leaves - 1 > num_features
    X_train, _, y_train, _ = train_test_split(*load_breast_cancer(return_X_y=True), test_size=0.1, random_state=2)
3702
    params = {"linear_tree": True, "verbose": -1, "metric": "mse", "seed": 0}
3703
3704
3705
3706
3707
3708
    train_data = lgb.Dataset(X_train, label=y_train, params=dict(params, num_leaves=2))
    est = lgb.train(params, train_data, num_boost_round=10, categorical_feature=[0])
    train_data = lgb.Dataset(X_train, label=y_train, params=dict(params, num_leaves=60))
    est = lgb.train(params, train_data, num_boost_round=10, categorical_feature=[0])


3709
def test_save_and_load_linear(tmp_path):
3710
3711
3712
    X_train, X_test, y_train, y_test = train_test_split(
        *load_breast_cancer(return_X_y=True), test_size=0.1, random_state=2
    )
3713
    X_train = np.concatenate([np.ones((X_train.shape[0], 1)), X_train], 1)
3714
3715
3716
    X_train[: X_train.shape[0] // 2, 0] = 0
    y_train[: X_train.shape[0] // 2] = 1
    params = {"linear_tree": True}
3717
3718
3719
3720
    train_data_1 = lgb.Dataset(X_train, label=y_train, params=params)
    est_1 = lgb.train(params, train_data_1, num_boost_round=10, categorical_feature=[0])
    pred_1 = est_1.predict(X_train)

3721
    tmp_dataset = str(tmp_path / "temp_dataset.bin")
3722
3723
3724
3725
3726
3727
    train_data_1.save_binary(tmp_dataset)
    train_data_2 = lgb.Dataset(tmp_dataset)
    est_2 = lgb.train(params, train_data_2, num_boost_round=10)
    pred_2 = est_2.predict(X_train)
    np.testing.assert_allclose(pred_1, pred_2)

3728
    model_file = str(tmp_path / "model.txt")
3729
3730
3731
3732
3733
3734
    est_2.save_model(model_file)
    est_3 = lgb.Booster(model_file=model_file)
    pred_3 = est_3.predict(X_train)
    np.testing.assert_allclose(pred_2, pred_3)


3735
3736
3737
def test_linear_single_leaf():
    X_train, y_train = load_breast_cancer(return_X_y=True)
    train_data = lgb.Dataset(X_train, label=y_train)
3738
    params = {"objective": "binary", "linear_tree": True, "min_sum_hessian": 5000}
3739
3740
3741
3742
3743
    bst = lgb.train(params, train_data, num_boost_round=5)
    y_pred = bst.predict(X_train)
    assert log_loss(y_train, y_pred) < 0.661


3744
3745
3746
3747
3748
def test_predict_with_start_iteration():
    def inner_test(X, y, params, early_stopping_rounds):
        X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
        train_data = lgb.Dataset(X_train, label=y_train)
        valid_data = lgb.Dataset(X_test, label=y_test)
3749
        callbacks = [lgb.early_stopping(early_stopping_rounds)] if early_stopping_rounds is not None else []
3750
        booster = lgb.train(params, train_data, num_boost_round=50, valid_sets=[valid_data], callbacks=callbacks)
3751
3752
3753
3754
3755
3756
3757
3758
3759
3760
3761
3762
3763
3764
3765
3766
3767

        # test that the predict once with all iterations equals summed results with start_iteration and num_iteration
        all_pred = booster.predict(X, raw_score=True)
        all_pred_contrib = booster.predict(X, pred_contrib=True)
        steps = [10, 12]
        for step in steps:
            pred = np.zeros_like(all_pred)
            pred_contrib = np.zeros_like(all_pred_contrib)
            for start_iter in range(0, 50, step):
                pred += booster.predict(X, start_iteration=start_iter, num_iteration=step, raw_score=True)
                pred_contrib += booster.predict(X, start_iteration=start_iter, num_iteration=step, pred_contrib=True)
            np.testing.assert_allclose(all_pred, pred)
            np.testing.assert_allclose(all_pred_contrib, pred_contrib)
        # test the case where start_iteration <= 0, and num_iteration is None
        pred1 = booster.predict(X, start_iteration=-1)
        pred2 = booster.predict(X, num_iteration=booster.best_iteration)
        np.testing.assert_allclose(pred1, pred2)
3768

3769
3770
3771
3772
3773
3774
3775
3776
3777
3778
3779
3780
3781
3782
3783
3784
3785
3786
3787
3788
3789
3790
        # test the case where start_iteration > 0, and num_iteration <= 0
        pred4 = booster.predict(X, start_iteration=10, num_iteration=-1)
        pred5 = booster.predict(X, start_iteration=10, num_iteration=90)
        pred6 = booster.predict(X, start_iteration=10, num_iteration=0)
        np.testing.assert_allclose(pred4, pred5)
        np.testing.assert_allclose(pred4, pred6)

        # test the case where start_iteration > 0, and num_iteration <= 0, with pred_leaf=True
        pred4 = booster.predict(X, start_iteration=10, num_iteration=-1, pred_leaf=True)
        pred5 = booster.predict(X, start_iteration=10, num_iteration=40, pred_leaf=True)
        pred6 = booster.predict(X, start_iteration=10, num_iteration=0, pred_leaf=True)
        np.testing.assert_allclose(pred4, pred5)
        np.testing.assert_allclose(pred4, pred6)

        # test the case where start_iteration > 0, and num_iteration <= 0, with pred_contrib=True
        pred4 = booster.predict(X, start_iteration=10, num_iteration=-1, pred_contrib=True)
        pred5 = booster.predict(X, start_iteration=10, num_iteration=40, pred_contrib=True)
        pred6 = booster.predict(X, start_iteration=10, num_iteration=0, pred_contrib=True)
        np.testing.assert_allclose(pred4, pred5)
        np.testing.assert_allclose(pred4, pred6)

    # test for regression
3791
    X, y = make_synthetic_regression()
3792
    params = {"objective": "regression", "verbose": -1, "metric": "l2", "learning_rate": 0.5}
3793
3794
3795
3796
3797
3798
3799
    # test both with and without early stopping
    inner_test(X, y, params, early_stopping_rounds=1)
    inner_test(X, y, params, early_stopping_rounds=5)
    inner_test(X, y, params, early_stopping_rounds=None)

    # test for multi-class
    X, y = load_iris(return_X_y=True)
3800
    params = {"objective": "multiclass", "num_class": 3, "verbose": -1, "metric": "multi_error"}
3801
3802
3803
3804
3805
3806
3807
    # test both with and without early stopping
    inner_test(X, y, params, early_stopping_rounds=1)
    inner_test(X, y, params, early_stopping_rounds=5)
    inner_test(X, y, params, early_stopping_rounds=None)

    # test for binary
    X, y = load_breast_cancer(return_X_y=True)
3808
    params = {"objective": "binary", "verbose": -1, "metric": "auc"}
3809
3810
3811
3812
3813
3814
    # test both with and without early stopping
    inner_test(X, y, params, early_stopping_rounds=1)
    inner_test(X, y, params, early_stopping_rounds=5)
    inner_test(X, y, params, early_stopping_rounds=None)


3815
3816
3817
3818
3819
3820
3821
3822
3823
3824
3825
3826
3827
3828
3829
3830
3831
3832
3833
3834
3835
3836
3837
3838
3839
3840
3841
3842
@pytest.mark.parametrize("use_init_score", [False, True])
def test_predict_stump(rng, use_init_score):
    X, y = load_breast_cancer(return_X_y=True)
    dataset_kwargs = {"data": X, "label": y}
    if use_init_score:
        dataset_kwargs.update({"init_score": rng.uniform(size=y.shape)})
    bst = lgb.train(
        train_set=lgb.Dataset(**dataset_kwargs),
        params={"objective": "binary", "min_data_in_leaf": X.shape[0]},
        num_boost_round=5,
    )
    # checking prediction from 1 iteration and the whole model, to prevent bugs
    # of the form "a model of n stumps predicts n * initial_score"
    preds_1 = bst.predict(X, raw_score=True, num_iteration=1)
    preds_all = bst.predict(X, raw_score=True)
    if use_init_score:
        # if init_score was provided, a model of stumps should predict all 0s
        all_zeroes = np.full_like(preds_1, fill_value=0.0)
        np.testing.assert_allclose(preds_1, all_zeroes)
        np.testing.assert_allclose(preds_all, all_zeroes)
    else:
        # if init_score was not provided, prediction for a model of stumps should be
        # the "average" of the labels
        y_avg = np.log(y.mean() / (1.0 - y.mean()))
        np.testing.assert_allclose(preds_1, np.full_like(preds_1, fill_value=y_avg))
        np.testing.assert_allclose(preds_all, np.full_like(preds_all, fill_value=y_avg))


3843
3844
3845
def test_average_precision_metric():
    # test against sklearn average precision metric
    X, y = load_breast_cancer(return_X_y=True)
3846
    params = {"objective": "binary", "metric": "average_precision", "verbose": -1}
3847
3848
    res = {}
    lgb_X = lgb.Dataset(X, label=y)
3849
3850
    est = lgb.train(params, lgb_X, num_boost_round=10, valid_sets=[lgb_X], callbacks=[lgb.record_evaluation(res)])
    ap = res["training"]["average_precision"][-1]
3851
3852
3853
3854
3855
3856
3857
    pred = est.predict(X)
    sklearn_ap = average_precision_score(y, pred)
    assert ap == pytest.approx(sklearn_ap)
    # test that average precision is 1 where model predicts perfectly
    y = y.copy()
    y[:] = 1
    lgb_X = lgb.Dataset(X, label=y)
3858
3859
    lgb.train(params, lgb_X, num_boost_round=1, valid_sets=[lgb_X], callbacks=[lgb.record_evaluation(res)])
    assert res["training"]["average_precision"][-1] == pytest.approx(1)
3860
3861
3862
3863
3864
3865


def test_reset_params_works_with_metric_num_class_and_boosting():
    X, y = load_breast_cancer(return_X_y=True)
    dataset_params = {"max_bin": 150}
    booster_params = {
3866
3867
3868
3869
3870
3871
        "objective": "multiclass",
        "max_depth": 4,
        "bagging_fraction": 0.8,
        "metric": ["multi_logloss", "multi_error"],
        "boosting": "gbdt",
        "num_class": 5,
3872
3873
    }
    dtrain = lgb.Dataset(X, y, params=dataset_params)
3874
    bst = lgb.Booster(params=booster_params, train_set=dtrain)
3875
3876
3877
3878

    expected_params = dict(dataset_params, **booster_params)
    assert bst.params == expected_params

3879
    booster_params["bagging_fraction"] += 0.1
3880
3881
3882
3883
3884
    new_bst = bst.reset_parameter(booster_params)

    expected_params = dict(dataset_params, **booster_params)
    assert bst.params == expected_params
    assert new_bst.params == expected_params
3885
3886


3887
3888
@pytest.mark.parametrize("linear_tree", [False, True])
def test_dump_model_stump(linear_tree):
3889
    X, y = load_breast_cancer(return_X_y=True)
3890

3891
    train_data = lgb.Dataset(X, label=y)
3892
3893
3894
3895
3896
3897
3898
3899
3900
3901
3902
3903
3904
3905
3906
3907
3908
3909
3910
    params = {"objective": "binary", "verbose": -1, "linear_tree": linear_tree, "min_data_in_leaf": len(y)}
    bst = lgb.train(params, train_data, num_boost_round=5)
    dumped_model = bst.dump_model(num_iteration=5, start_iteration=0)
    tree_structure = dumped_model["tree_info"][0]["tree_structure"]
    assert len(dumped_model["tree_info"]) == 1
    assert "leaf_value" in tree_structure
    assert tree_structure["leaf_count"] == len(y)


def test_dump_model():
    initial_score_offset = 57.5
    X, y = make_synthetic_regression()
    train_data = lgb.Dataset(X, label=y + initial_score_offset)

    params = {
        "objective": "regression",
        "verbose": -1,
        "boost_from_average": True,
    }
3911
    bst = lgb.train(params, train_data, num_boost_round=5)
3912
3913
    dumped_model = bst.dump_model(num_iteration=5, start_iteration=0)
    dumped_model_str = str(dumped_model)
3914
3915
3916
3917
3918
    assert "leaf_features" not in dumped_model_str
    assert "leaf_coeff" not in dumped_model_str
    assert "leaf_const" not in dumped_model_str
    assert "leaf_value" in dumped_model_str
    assert "leaf_count" in dumped_model_str
3919
3920
3921
3922
3923
3924
3925
3926
3927
3928
3929
3930
3931
3932
3933
3934
3935

    for tree in dumped_model["tree_info"]:
        assert tree["tree_structure"]["internal_value"] != 0

    assert dumped_model["tree_info"][0]["tree_structure"]["internal_value"] == pytest.approx(
        initial_score_offset, abs=1
    )
    assert_all_trees_valid(dumped_model)


def test_dump_model_linear():
    X, y = load_breast_cancer(return_X_y=True)
    params = {
        "objective": "binary",
        "verbose": -1,
        "linear_tree": True,
    }
3936
3937
    train_data = lgb.Dataset(X, label=y)
    bst = lgb.train(params, train_data, num_boost_round=5)
3938
3939
3940
    dumped_model = bst.dump_model(num_iteration=5, start_iteration=0)
    assert_all_trees_valid(dumped_model)
    dumped_model_str = str(dumped_model)
3941
3942
3943
3944
3945
    assert "leaf_features" in dumped_model_str
    assert "leaf_coeff" in dumped_model_str
    assert "leaf_const" in dumped_model_str
    assert "leaf_value" in dumped_model_str
    assert "leaf_count" in dumped_model_str
3946
3947
3948
3949


def test_dump_model_hook():
    def hook(obj):
3950
3951
3952
        if "leaf_value" in obj:
            obj["LV"] = obj["leaf_value"]
            del obj["leaf_value"]
3953
3954
3955
3956
        return obj

    X, y = load_breast_cancer(return_X_y=True)
    train_data = lgb.Dataset(X, label=y)
3957
    params = {"objective": "binary", "verbose": -1}
3958
3959
3960
3961
    bst = lgb.train(params, train_data, num_boost_round=5)
    dumped_model_str = str(bst.dump_model(5, 0, object_hook=hook))
    assert "leaf_value" not in dumped_model_str
    assert "LV" in dumped_model_str
3962
3963


3964
@pytest.mark.skipif(getenv("TASK", "") == "cuda", reason="Forced splits are not yet supported by CUDA version")
3965
def test_force_split_with_feature_fraction(tmp_path):
3966
    X, y = make_synthetic_regression()
3967
3968
3969
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
    lgb_train = lgb.Dataset(X_train, y_train)

3970
    forced_split = {"feature": 0, "threshold": 0.5, "right": {"feature": 2, "threshold": 10.0}}
3971
3972
3973
3974
3975
3976
3977
3978
3979
3980

    tmp_split_file = tmp_path / "forced_split.json"
    with open(tmp_split_file, "w") as f:
        f.write(json.dumps(forced_split))

    params = {
        "objective": "regression",
        "feature_fraction": 0.6,
        "force_col_wise": True,
        "feature_fraction_seed": 1,
3981
        "forcedsplits_filename": tmp_split_file,
3982
3983
3984
3985
    }

    gbm = lgb.train(params, lgb_train)
    ret = mean_absolute_error(y_test, gbm.predict(X_test))
3986
    assert ret < 15.7
3987
3988
3989
3990
3991

    tree_info = gbm.dump_model()["tree_info"]
    assert len(tree_info) > 1
    for tree in tree_info:
        tree_structure = tree["tree_structure"]
3992
        assert tree_structure["split_feature"] == 0
3993
3994


3995
3996
3997
3998
3999
4000
def test_goss_boosting_and_strategy_equivalent():
    X, y = make_synthetic_regression(n_samples=10_000, n_features=10, n_informative=5, random_state=42)
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
    lgb_train = lgb.Dataset(X_train, y_train)
    lgb_eval = lgb.Dataset(X_test, y_test, reference=lgb_train)
    base_params = {
4001
4002
4003
4004
4005
4006
4007
        "metric": "l2",
        "verbose": -1,
        "bagging_seed": 0,
        "learning_rate": 0.05,
        "num_threads": 1,
        "force_row_wise": True,
        "gpu_use_dp": True,
4008
    }
4009
    params1 = {**base_params, "boosting": "goss"}
4010
    evals_result1 = {}
4011
4012
4013
4014
    lgb.train(
        params1, lgb_train, num_boost_round=10, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result1)]
    )
    params2 = {**base_params, "data_sample_strategy": "goss"}
4015
    evals_result2 = {}
4016
4017
4018
4019
    lgb.train(
        params2, lgb_train, num_boost_round=10, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result2)]
    )
    assert evals_result1["valid_0"]["l2"] == evals_result2["valid_0"]["l2"]
4020
4021
4022
4023
4024
4025
4026
4027
4028


def test_sample_strategy_with_boosting():
    X, y = make_synthetic_regression(n_samples=10_000, n_features=10, n_informative=5, random_state=42)
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
    lgb_train = lgb.Dataset(X_train, y_train)
    lgb_eval = lgb.Dataset(X_test, y_test, reference=lgb_train)

    base_params = {
4029
4030
4031
4032
4033
        "metric": "l2",
        "verbose": -1,
        "num_threads": 1,
        "force_row_wise": True,
        "gpu_use_dp": True,
4034
4035
    }

4036
    params1 = {**base_params, "boosting": "dart", "data_sample_strategy": "goss"}
4037
    evals_result = {}
4038
4039
4040
4041
    gbm = lgb.train(
        params1, lgb_train, num_boost_round=10, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
    )
    eval_res1 = evals_result["valid_0"]["l2"][-1]
4042
4043
4044
4045
    test_res1 = mean_squared_error(y_test, gbm.predict(X_test))
    assert test_res1 == pytest.approx(3149.393862, abs=1.0)
    assert eval_res1 == pytest.approx(test_res1)

4046
    params2 = {**base_params, "boosting": "gbdt", "data_sample_strategy": "goss"}
4047
    evals_result = {}
4048
4049
4050
4051
    gbm = lgb.train(
        params2, lgb_train, num_boost_round=10, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
    )
    eval_res2 = evals_result["valid_0"]["l2"][-1]
4052
4053
4054
4055
    test_res2 = mean_squared_error(y_test, gbm.predict(X_test))
    assert test_res2 == pytest.approx(2547.715968, abs=1.0)
    assert eval_res2 == pytest.approx(test_res2)

4056
    params3 = {**base_params, "boosting": "goss", "data_sample_strategy": "goss"}
4057
    evals_result = {}
4058
4059
4060
4061
    gbm = lgb.train(
        params3, lgb_train, num_boost_round=10, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
    )
    eval_res3 = evals_result["valid_0"]["l2"][-1]
4062
4063
4064
4065
    test_res3 = mean_squared_error(y_test, gbm.predict(X_test))
    assert test_res3 == pytest.approx(2547.715968, abs=1.0)
    assert eval_res3 == pytest.approx(test_res3)

4066
    params4 = {**base_params, "boosting": "rf", "data_sample_strategy": "goss"}
4067
    evals_result = {}
4068
4069
4070
4071
    gbm = lgb.train(
        params4, lgb_train, num_boost_round=10, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
    )
    eval_res4 = evals_result["valid_0"]["l2"][-1]
4072
4073
4074
4075
4076
4077
4078
4079
4080
4081
4082
4083
4084
    test_res4 = mean_squared_error(y_test, gbm.predict(X_test))
    assert test_res4 == pytest.approx(2095.538735, abs=1.0)
    assert eval_res4 == pytest.approx(test_res4)

    assert test_res1 != test_res2
    assert eval_res1 != eval_res2
    assert test_res2 == test_res3
    assert eval_res2 == eval_res3
    assert eval_res1 != eval_res4
    assert test_res1 != test_res4
    assert eval_res2 != eval_res4
    assert test_res2 != test_res4

4085
4086
4087
4088
4089
4090
4091
    params5 = {
        **base_params,
        "boosting": "dart",
        "data_sample_strategy": "bagging",
        "bagging_freq": 1,
        "bagging_fraction": 0.5,
    }
4092
    evals_result = {}
4093
4094
4095
4096
    gbm = lgb.train(
        params5, lgb_train, num_boost_round=10, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
    )
    eval_res5 = evals_result["valid_0"]["l2"][-1]
4097
4098
4099
4100
    test_res5 = mean_squared_error(y_test, gbm.predict(X_test))
    assert test_res5 == pytest.approx(3134.866931, abs=1.0)
    assert eval_res5 == pytest.approx(test_res5)

4101
4102
4103
4104
4105
4106
4107
    params6 = {
        **base_params,
        "boosting": "gbdt",
        "data_sample_strategy": "bagging",
        "bagging_freq": 1,
        "bagging_fraction": 0.5,
    }
4108
    evals_result = {}
4109
4110
4111
4112
    gbm = lgb.train(
        params6, lgb_train, num_boost_round=10, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
    )
    eval_res6 = evals_result["valid_0"]["l2"][-1]
4113
4114
4115
4116
4117
4118
    test_res6 = mean_squared_error(y_test, gbm.predict(X_test))
    assert test_res6 == pytest.approx(2539.792378, abs=1.0)
    assert eval_res6 == pytest.approx(test_res6)
    assert test_res5 != test_res6
    assert eval_res5 != eval_res6

4119
4120
4121
4122
4123
4124
4125
    params7 = {
        **base_params,
        "boosting": "rf",
        "data_sample_strategy": "bagging",
        "bagging_freq": 1,
        "bagging_fraction": 0.5,
    }
4126
    evals_result = {}
4127
4128
4129
4130
    gbm = lgb.train(
        params7, lgb_train, num_boost_round=10, valid_sets=lgb_eval, callbacks=[lgb.record_evaluation(evals_result)]
    )
    eval_res7 = evals_result["valid_0"]["l2"][-1]
4131
4132
4133
4134
4135
4136
4137
4138
4139
    test_res7 = mean_squared_error(y_test, gbm.predict(X_test))
    assert test_res7 == pytest.approx(1518.704481, abs=1.0)
    assert eval_res7 == pytest.approx(test_res7)
    assert test_res5 != test_res7
    assert eval_res5 != eval_res7
    assert test_res6 != test_res7
    assert eval_res6 != eval_res7


4140
4141
4142
4143
4144
def test_record_evaluation_with_train():
    X, y = make_synthetic_regression()
    ds = lgb.Dataset(X, y)
    eval_result = {}
    callbacks = [lgb.record_evaluation(eval_result)]
4145
    params = {"objective": "l2", "num_leaves": 3}
4146
4147
    num_boost_round = 5
    bst = lgb.train(params, ds, num_boost_round=num_boost_round, valid_sets=[ds], callbacks=callbacks)
4148
    assert list(eval_result.keys()) == ["training"]
4149
4150
4151
4152
4153
    train_mses = []
    for i in range(num_boost_round):
        pred = bst.predict(X, num_iteration=i + 1)
        mse = mean_squared_error(y, pred)
        train_mses.append(mse)
4154
    np.testing.assert_allclose(eval_result["training"]["l2"], train_mses)
4155
4156


4157
@pytest.mark.parametrize("train_metric", [False, True])
4158
4159
4160
4161
4162
def test_record_evaluation_with_cv(train_metric):
    X, y = make_synthetic_regression()
    ds = lgb.Dataset(X, y)
    eval_result = {}
    callbacks = [lgb.record_evaluation(eval_result)]
4163
4164
4165
4166
4167
4168
    metrics = ["l2", "rmse"]
    params = {"objective": "l2", "num_leaves": 3, "metric": metrics}
    cv_hist = lgb.cv(
        params, ds, num_boost_round=5, stratified=False, callbacks=callbacks, eval_train_metric=train_metric
    )
    expected_datasets = {"valid"}
4169
    if train_metric:
4170
        expected_datasets.add("train")
4171
4172
4173
    assert set(eval_result.keys()) == expected_datasets
    for dataset in expected_datasets:
        for metric in metrics:
4174
4175
4176
            for agg in ("mean", "stdv"):
                key = f"{dataset} {metric}-{agg}"
                np.testing.assert_allclose(cv_hist[key], eval_result[dataset][f"{metric}-{agg}"])
4177
4178


4179
def test_pandas_with_numpy_regular_dtypes(rng_fixed_seed):
4180
4181
4182
4183
    pd = pytest.importorskip("pandas")
    uints = ["uint8", "uint16", "uint32", "uint64"]
    ints = ["int8", "int16", "int32", "int64"]
    bool_and_floats = ["bool", "float16", "float32", "float64"]
4184
4185
4186

    n_samples = 100
    # data as float64
4187
4188
    df = pd.DataFrame(
        {
4189
4190
4191
4192
            "x1": rng_fixed_seed.integers(low=0, high=2, size=n_samples),
            "x2": rng_fixed_seed.integers(low=1, high=3, size=n_samples),
            "x3": 10 * rng_fixed_seed.integers(low=1, high=3, size=n_samples),
            "x4": 100 * rng_fixed_seed.integers(low=1, high=3, size=n_samples),
4193
4194
        }
    )
4195
    df = df.astype(np.float64)
4196
    y = df["x1"] * (df["x2"] + df["x3"] + df["x4"])
4197
    ds = lgb.Dataset(df, y)
4198
    params = {"objective": "l2", "num_leaves": 31, "min_child_samples": 1}
4199
4200
4201
4202
    bst = lgb.train(params, ds, num_boost_round=5)
    preds = bst.predict(df)

    # test all features were used
4203
    assert bst.trees_to_dataframe()["split_feature"].nunique() == df.shape[1]
4204
4205
4206
4207
4208
4209
    # test the score is better than predicting the mean
    baseline = np.full_like(y, y.mean())
    assert mean_squared_error(y, preds) < mean_squared_error(y, baseline)

    # test all predictions are equal using different input dtypes
    for target_dtypes in [uints, ints, bool_and_floats]:
4210
        df2 = df.astype({f"x{i}": dtype for i, dtype in enumerate(target_dtypes, start=1)})
4211
4212
4213
4214
4215
4216
4217
        assert df2.dtypes.tolist() == target_dtypes
        ds2 = lgb.Dataset(df2, y)
        bst2 = lgb.train(params, ds2, num_boost_round=5)
        preds2 = bst2.predict(df2)
        np.testing.assert_allclose(preds, preds2)


4218
def test_pandas_nullable_dtypes(rng_fixed_seed):
4219
4220
4221
    pd = pytest.importorskip("pandas")
    df = pd.DataFrame(
        {
4222
            "x1": rng_fixed_seed.integers(low=1, high=3, size=100),
4223
            "x2": np.linspace(-1, 1, 100),
4224
4225
            "x3": pd.arrays.SparseArray(rng_fixed_seed.integers(low=0, high=11, size=100)),
            "x4": rng_fixed_seed.uniform(size=(100,)) < 0.5,
4226
4227
        }
    )
4228
    # introduce some missing values
4229
4230
    df.loc[1, "x1"] = np.nan
    df.loc[2, "x2"] = np.nan
4231
    # in recent versions of pandas, type 'bool' is incompatible with nan values in x4
4232
    df["x4"] = df["x4"].astype(np.float64)
4233
    df.loc[3, "x4"] = np.nan
4234
    y = df["x1"] * df["x2"] + df["x3"] * (1 + df["x4"])
4235
4236
4237
    y = y.fillna(0)

    # train with regular dtypes
4238
    params = {"objective": "l2", "num_leaves": 31, "min_child_samples": 1}
4239
4240
4241
4242
4243
4244
    ds = lgb.Dataset(df, y)
    bst = lgb.train(params, ds, num_boost_round=5)
    preds = bst.predict(df)

    # convert to nullable dtypes
    df2 = df.copy()
4245
4246
4247
    df2["x1"] = df2["x1"].astype("Int32")
    df2["x2"] = df2["x2"].astype("Float64")
    df2["x4"] = df2["x4"].astype("boolean")
4248
4249
4250
4251
4252
4253
4254
4255

    # test training succeeds
    ds_nullable_dtypes = lgb.Dataset(df2, y)
    bst_nullable_dtypes = lgb.train(params, ds_nullable_dtypes, num_boost_round=5)
    preds_nullable_dtypes = bst_nullable_dtypes.predict(df2)

    trees_df = bst_nullable_dtypes.trees_to_dataframe()
    # test all features were used
4256
    assert trees_df["split_feature"].nunique() == df.shape[1]
4257
4258
4259
4260
4261
4262
    # test the score is better than predicting the mean
    baseline = np.full_like(y, y.mean())
    assert mean_squared_error(y, preds) < mean_squared_error(y, baseline)

    # test equal predictions
    np.testing.assert_allclose(preds, preds_nullable_dtypes)
4263
4264
4265
4266
4267


def test_boost_from_average_with_single_leaf_trees():
    # test data are taken from bug report
    # https://github.com/microsoft/LightGBM/issues/4708
4268
4269
4270
4271
4272
4273
4274
4275
4276
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    X = np.array(
        [
            [1021.0589, 1018.9578],
            [1023.85754, 1018.7854],
            [1024.5468, 1018.88513],
            [1019.02954, 1018.88513],
            [1016.79926, 1018.88513],
            [1007.6, 1018.88513],
        ],
        dtype=np.float32,
    )
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    y = np.array([1023.8, 1024.6, 1024.4, 1023.8, 1022.0, 1014.4], dtype=np.float32)
    params = {
        "extra_trees": True,
        "min_data_in_bin": 1,
        "extra_seed": 7,
        "objective": "regression",
        "verbose": -1,
        "boost_from_average": True,
        "min_data_in_leaf": 1,
    }
    train_set = lgb.Dataset(X, y)
    model = lgb.train(params=params, train_set=train_set, num_boost_round=10)

    preds = model.predict(X)
    mean_preds = np.mean(preds)
    assert y.min() <= mean_preds <= y.max()
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4297
def test_cegb_split_buffer_clean(rng_fixed_seed):
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    # modified from https://github.com/microsoft/LightGBM/issues/3679#issuecomment-938652811
    # and https://github.com/microsoft/LightGBM/pull/5087
    # test that the ``splits_per_leaf_`` of CEGB is cleaned before training a new tree
    # which is done in the fix #5164
    # without the fix:
    #    Check failed: (best_split_info.left_count) > (0)

    R, C = 1000, 100
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    data = rng_fixed_seed.standard_normal(size=(R, C))
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    for i in range(1, C):
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        data[i] += data[0] * rng_fixed_seed.standard_normal()
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    N = int(0.8 * len(data))
    train_data = data[:N]
    test_data = data[N:]
    train_y = np.sum(train_data, axis=1)
    test_y = np.sum(test_data, axis=1)

    train = lgb.Dataset(train_data, train_y, free_raw_data=True)

    params = {
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        "boosting_type": "gbdt",
        "objective": "regression",
        "max_bin": 255,
        "num_leaves": 31,
        "seed": 0,
        "learning_rate": 0.1,
        "min_data_in_leaf": 0,
        "verbose": -1,
        "min_split_gain": 1000.0,
        "cegb_penalty_feature_coupled": 5 * np.arange(C),
        "cegb_penalty_split": 0.0002,
        "cegb_tradeoff": 10.0,
        "force_col_wise": True,
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    }

    model = lgb.train(params, train, num_boost_round=10)
    predicts = model.predict(test_data)
    rmse = np.sqrt(mean_squared_error(test_y, predicts))
    assert rmse < 10.0
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def test_verbosity_and_verbose(capsys):
    X, y = make_synthetic_regression()
    ds = lgb.Dataset(X, y)
    params = {
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        "num_leaves": 3,
        "verbose": 1,
        "verbosity": 0,
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    }
    lgb.train(params, ds, num_boost_round=1)
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    expected_msg = "[LightGBM] [Warning] verbosity is set=0, verbose=1 will be ignored. Current value: verbosity=0"
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    stdout = capsys.readouterr().out
    assert expected_msg in stdout


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def test_verbosity_is_respected_when_using_custom_objective(capsys):
    X, y = make_synthetic_regression()
    ds = lgb.Dataset(X, y)
    params = {
        "objective": mse_obj,
        "nonsense": 123,
        "num_leaves": 3,
    }
    lgb.train({**params, "verbosity": -1}, ds, num_boost_round=1)
4363
    assert_silent(capsys)
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    lgb.train({**params, "verbosity": 0}, ds, num_boost_round=1)
    assert "[LightGBM] [Warning] Unknown parameter: nonsense" in capsys.readouterr().out


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@pytest.mark.parametrize("verbosity_param", lgb.basic._ConfigAliases.get("verbosity"))
@pytest.mark.parametrize("verbosity", [-1, 0])
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def test_verbosity_can_suppress_alias_warnings(capsys, verbosity_param, verbosity):
    X, y = make_synthetic_regression()
    ds = lgb.Dataset(X, y)
    params = {
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        "num_leaves": 3,
        "subsample": 0.75,
        "bagging_fraction": 0.8,
        "force_col_wise": True,
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        verbosity_param: verbosity,
    }
    lgb.train(params, ds, num_boost_round=1)
    expected_msg = (
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        "[LightGBM] [Warning] bagging_fraction is set=0.8, subsample=0.75 will be ignored. "
        "Current value: bagging_fraction=0.8"
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    )
    stdout = capsys.readouterr().out
    if verbosity >= 0:
        assert expected_msg in stdout
    else:
4389
        assert re.search(r"\[LightGBM\]", stdout) is None
4390
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def test_cv_only_raises_num_rounds_warning_when_expected(capsys):
    X, y = make_synthetic_regression()
    ds = lgb.Dataset(X, y)
    base_params = {
        "num_leaves": 5,
        "objective": "regression",
        "verbosity": -1,
    }
    additional_kwargs = {"return_cvbooster": True, "stratified": False}

    # no warning: no aliases, all defaults
    cv_bst = lgb.cv({**base_params}, ds, **additional_kwargs)
    assert all(t == 100 for t in cv_bst["cvbooster"].num_trees())
    assert_silent(capsys)

    # no warning: no aliases, just num_boost_round
    cv_bst = lgb.cv({**base_params}, ds, num_boost_round=2, **additional_kwargs)
    assert all(t == 2 for t in cv_bst["cvbooster"].num_trees())
    assert_silent(capsys)

    # no warning: 1 alias + num_boost_round (both same value)
    cv_bst = lgb.cv({**base_params, "n_iter": 3}, ds, num_boost_round=3, **additional_kwargs)
    assert all(t == 3 for t in cv_bst["cvbooster"].num_trees())
    assert_silent(capsys)

    # no warning: 1 alias + num_boost_round (different values... value from params should win)
    cv_bst = lgb.cv({**base_params, "n_iter": 4}, ds, num_boost_round=3, **additional_kwargs)
    assert all(t == 4 for t in cv_bst["cvbooster"].num_trees())
    assert_silent(capsys)

    # no warning: 2 aliases (both same value)
    cv_bst = lgb.cv({**base_params, "n_iter": 3, "num_iterations": 3}, ds, **additional_kwargs)
    assert all(t == 3 for t in cv_bst["cvbooster"].num_trees())
    assert_silent(capsys)

    # no warning: 4 aliases (all same value)
    cv_bst = lgb.cv({**base_params, "n_iter": 3, "num_trees": 3, "nrounds": 3, "max_iter": 3}, ds, **additional_kwargs)
    assert all(t == 3 for t in cv_bst["cvbooster"].num_trees())
    assert_silent(capsys)

    # warning: 2 aliases (different values... "num_iterations" wins because it's the main param name)
    with pytest.warns(UserWarning, match="LightGBM will perform up to 5 boosting rounds"):
        cv_bst = lgb.cv({**base_params, "n_iter": 6, "num_iterations": 5}, ds, **additional_kwargs)
    assert all(t == 5 for t in cv_bst["cvbooster"].num_trees())
    # should not be any other logs (except the warning, intercepted by pytest)
    assert_silent(capsys)

    # warning: 2 aliases (different values... first one in the order from Config::parameter2aliases() wins)
    with pytest.warns(UserWarning, match="LightGBM will perform up to 4 boosting rounds"):
        cv_bst = lgb.cv({**base_params, "n_iter": 4, "max_iter": 5}, ds, **additional_kwargs)["cvbooster"]
    assert all(t == 4 for t in cv_bst.num_trees())
    # should not be any other logs (except the warning, intercepted by pytest)
    assert_silent(capsys)


def test_train_only_raises_num_rounds_warning_when_expected(capsys):
    X, y = make_synthetic_regression()
    ds = lgb.Dataset(X, y)
    base_params = {
        "num_leaves": 5,
        "objective": "regression",
        "verbosity": -1,
    }

    # no warning: no aliases, all defaults
    bst = lgb.train({**base_params}, ds)
    assert bst.num_trees() == 100
    assert_silent(capsys)

    # no warning: no aliases, just num_boost_round
    bst = lgb.train({**base_params}, ds, num_boost_round=2)
    assert bst.num_trees() == 2
    assert_silent(capsys)

    # no warning: 1 alias + num_boost_round (both same value)
    bst = lgb.train({**base_params, "n_iter": 3}, ds, num_boost_round=3)
    assert bst.num_trees() == 3
    assert_silent(capsys)

    # no warning: 1 alias + num_boost_round (different values... value from params should win)
    bst = lgb.train({**base_params, "n_iter": 4}, ds, num_boost_round=3)
    assert bst.num_trees() == 4
    assert_silent(capsys)

    # no warning: 2 aliases (both same value)
    bst = lgb.train({**base_params, "n_iter": 3, "num_iterations": 3}, ds)
    assert bst.num_trees() == 3
    assert_silent(capsys)

    # no warning: 4 aliases (all same value)
    bst = lgb.train({**base_params, "n_iter": 3, "num_trees": 3, "nrounds": 3, "max_iter": 3}, ds)
    assert bst.num_trees() == 3
    assert_silent(capsys)

    # warning: 2 aliases (different values... "num_iterations" wins because it's the main param name)
    with pytest.warns(UserWarning, match="LightGBM will perform up to 5 boosting rounds"):
        bst = lgb.train({**base_params, "n_iter": 6, "num_iterations": 5}, ds)
    assert bst.num_trees() == 5
    # should not be any other logs (except the warning, intercepted by pytest)
    assert_silent(capsys)

    # warning: 2 aliases (different values... first one in the order from Config::parameter2aliases() wins)
    with pytest.warns(UserWarning, match="LightGBM will perform up to 4 boosting rounds"):
        bst = lgb.train({**base_params, "n_iter": 4, "max_iter": 5}, ds)
    assert bst.num_trees() == 4
    # should not be any other logs (except the warning, intercepted by pytest)
    assert_silent(capsys)


4501
@pytest.mark.skipif(not PANDAS_INSTALLED, reason="pandas is not installed")
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4503
def test_validate_features():
    X, y = make_synthetic_regression()
4504
    features = ["x1", "x2", "x3", "x4"]
4505
4506
    df = pd_DataFrame(X, columns=features)
    ds = lgb.Dataset(df, y)
4507
    bst = lgb.train({"num_leaves": 15, "verbose": -1}, ds, num_boost_round=10)
4508
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4510
    assert bst.feature_name() == features

    # try to predict with a different feature
4511
    df2 = df.rename(columns={"x3": "z"})
4512
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4515
4516
    with pytest.raises(lgb.basic.LightGBMError, match="Expected 'x3' at position 2 but found 'z'"):
        bst.predict(df2, validate_features=True)

    # check that disabling the check doesn't raise the error
    bst.predict(df2, validate_features=False)
4517
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4521
4522
4523

    # try to refit with a different feature
    with pytest.raises(lgb.basic.LightGBMError, match="Expected 'x3' at position 2 but found 'z'"):
        bst.refit(df2, y, validate_features=True)

    # check that disabling the check doesn't raise the error
    bst.refit(df2, y, validate_features=False)
4524
4525


4526
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4532
def test_train_and_cv_raise_informative_error_for_train_set_of_wrong_type():
    with pytest.raises(TypeError, match=r"train\(\) only accepts Dataset object, train_set has type 'list'\."):
        lgb.train({}, train_set=[])
    with pytest.raises(TypeError, match=r"cv\(\) only accepts Dataset object, train_set has type 'list'\."):
        lgb.cv({}, train_set=[])


4533
@pytest.mark.parametrize("num_boost_round", [-7, -1, 0])
4534
4535
def test_train_and_cv_raise_informative_error_for_impossible_num_boost_round(num_boost_round):
    X, y = make_synthetic_regression(n_samples=100)
4536
    error_msg = rf"Number of boosting rounds must be greater than 0\. Got {num_boost_round}\."
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    with pytest.raises(ValueError, match=error_msg):
        lgb.train({}, train_set=lgb.Dataset(X, y), num_boost_round=num_boost_round)
    with pytest.raises(ValueError, match=error_msg):
        lgb.cv({}, train_set=lgb.Dataset(X, y), num_boost_round=num_boost_round)


def test_train_raises_informative_error_if_any_valid_sets_are_not_dataset_objects():
    X, y = make_synthetic_regression(n_samples=100)
    X_valid = X * 2.0
4546
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4548
    with pytest.raises(
        TypeError, match=r"Every item in valid_sets must be a Dataset object\. Item 1 has type 'tuple'\."
    ):
4549
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4551
        lgb.train(
            params={},
            train_set=lgb.Dataset(X, y),
4552
            valid_sets=[lgb.Dataset(X_valid, y), ([1.0], [2.0]), [5.6, 5.7, 5.8]],
4553
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4555
        )


4556
4557
def test_train_raises_informative_error_for_params_of_wrong_type():
    X, y = make_synthetic_regression()
4558
    params = {"num_leaves": "too-many"}
4559
    dtrain = lgb.Dataset(X, label=y)
4560
    with pytest.raises(lgb.basic.LightGBMError, match='Parameter num_leaves should be of type int, got "too-many"'):
4561
        lgb.train(params, dtrain)
4562
4563
4564
4565
4566


def test_quantized_training():
    X, y = make_synthetic_regression()
    ds = lgb.Dataset(X, label=y)
4567
    bst_params = {"num_leaves": 15, "verbose": -1, "seed": 0}
4568
4569
    bst = lgb.train(bst_params, ds, num_boost_round=10)
    rmse = np.sqrt(np.mean((bst.predict(X) - y) ** 2))
4570
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4576
    bst_params.update(
        {
            "use_quantized_grad": True,
            "num_grad_quant_bins": 30,
            "quant_train_renew_leaf": True,
        }
    )
4577
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4579
    quant_bst = lgb.train(bst_params, ds, num_boost_round=10)
    quant_rmse = np.sqrt(np.mean((quant_bst.predict(X) - y) ** 2))
    assert quant_rmse < rmse + 6.0
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4602


def test_bagging_by_query_in_lambdarank():
    rank_example_dir = Path(__file__).absolute().parents[2] / "examples" / "lambdarank"
    X_train, y_train = load_svmlight_file(str(rank_example_dir / "rank.train"))
    q_train = np.loadtxt(str(rank_example_dir / "rank.train.query"))
    X_test, y_test = load_svmlight_file(str(rank_example_dir / "rank.test"))
    q_test = np.loadtxt(str(rank_example_dir / "rank.test.query"))
    params = {"objective": "lambdarank", "verbose": -1, "metric": "ndcg", "ndcg_eval_at": [5]}
    lgb_train = lgb.Dataset(X_train, y_train, group=q_train, params=params)
    lgb_test = lgb.Dataset(X_test, y_test, group=q_test, params=params)
    gbm = lgb.train(params, lgb_train, num_boost_round=50, valid_sets=[lgb_test])
    ndcg_score = gbm.best_score["valid_0"]["ndcg@5"]

    params.update({"bagging_by_query": True, "bagging_fraction": 0.1, "bagging_freq": 1})
    gbm_bagging_by_query = lgb.train(params, lgb_train, num_boost_round=50, valid_sets=[lgb_test])
    ndcg_score_bagging_by_query = gbm_bagging_by_query.best_score["valid_0"]["ndcg@5"]

    params.update({"bagging_by_query": False, "bagging_fraction": 0.1, "bagging_freq": 1})
    gbm_no_bagging_by_query = lgb.train(params, lgb_train, num_boost_round=50, valid_sets=[lgb_test])
    ndcg_score_no_bagging_by_query = gbm_no_bagging_by_query.best_score["valid_0"]["ndcg@5"]
    assert ndcg_score_bagging_by_query >= ndcg_score - 0.1
    assert ndcg_score_no_bagging_by_query >= ndcg_score - 0.1