"python-package/vscode:/vscode.git/clone" did not exist on "170a93044bf7c8c3d90d64b4ceeb21d3c8bf1fbb"
test_basic.py 31 KB
Newer Older
wxchan's avatar
wxchan committed
1
# coding: utf-8
2
3
import filecmp
import numbers
4
import re
5
from copy import deepcopy
6
from os import getenv
7
from pathlib import Path
wxchan's avatar
wxchan committed
8

wxchan's avatar
wxchan committed
9
import numpy as np
10
import pytest
11
from scipy import sparse
12
from sklearn.datasets import dump_svmlight_file, load_svmlight_file
wxchan's avatar
wxchan committed
13
from sklearn.model_selection import train_test_split
wxchan's avatar
wxchan committed
14

15
import lightgbm as lgb
16
from lightgbm.compat import PANDAS_INSTALLED, pd_DataFrame, pd_Series
17

18
from .utils import dummy_obj, load_breast_cancer, mse_obj
19

wxchan's avatar
wxchan committed
20

21
22
23
def test_basic(tmp_path):
    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)
24
25
26
    feature_names = [f"Column_{i}" for i in range(X_train.shape[1])]
    feature_names[1] = "a" * 1000  # set one name to a value longer than default buffer size
    train_data = lgb.Dataset(X_train, label=y_train, feature_name=feature_names)
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
    valid_data = train_data.create_valid(X_test, label=y_test)

    params = {
        "objective": "binary",
        "metric": "auc",
        "min_data": 10,
        "num_leaves": 15,
        "verbose": -1,
        "num_threads": 1,
        "max_bin": 255,
        "gpu_use_dp": True
    }
    bst = lgb.Booster(params, train_data)
    bst.add_valid(valid_data, "valid_1")

    for i in range(20):
        bst.update()
        if i % 10 == 0:
            print(bst.eval_train(), bst.eval_valid())

47
48
    assert train_data.get_feature_name() == feature_names

49
50
51
    assert bst.current_iteration() == 20
    assert bst.num_trees() == 20
    assert bst.num_model_per_iteration() == 1
52
    if getenv('TASK', '') != 'cuda':
53
54
        assert bst.lower_bound() == pytest.approx(-2.9040190126976606)
        assert bst.upper_bound() == pytest.approx(3.3182142872462883)
55

56
57
    tname = tmp_path / "svm_light.dat"
    model_file = tmp_path / "model.txt"
58
59
60
61
62
63
64
65
66
67

    bst.save_model(model_file)
    pred_from_matr = bst.predict(X_test)
    with open(tname, "w+b") as f:
        dump_svmlight_file(X_test, y_test, f)
    pred_from_file = bst.predict(tname)
    np.testing.assert_allclose(pred_from_matr, pred_from_file)

    # check saved model persistence
    bst = lgb.Booster(params, model_file=model_file)
68
    assert bst.feature_name() == feature_names
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
    pred_from_model_file = bst.predict(X_test)
    # we need to check the consistency of model file here, so test for exact equal
    np.testing.assert_array_equal(pred_from_matr, pred_from_model_file)

    # check early stopping is working. Make it stop very early, so the scores should be very close to zero
    pred_parameter = {"pred_early_stop": True, "pred_early_stop_freq": 5, "pred_early_stop_margin": 1.5}
    pred_early_stopping = bst.predict(X_test, **pred_parameter)
    # scores likely to be different, but prediction should still be the same
    np.testing.assert_array_equal(np.sign(pred_from_matr), np.sign(pred_early_stopping))

    # test that shape is checked during prediction
    bad_X_test = X_test[:, 1:]
    bad_shape_error_msg = "The number of features in data*"
    np.testing.assert_raises_regex(lgb.basic.LightGBMError, bad_shape_error_msg,
                                   bst.predict, bad_X_test)
    np.testing.assert_raises_regex(lgb.basic.LightGBMError, bad_shape_error_msg,
                                   bst.predict, sparse.csr_matrix(bad_X_test))
    np.testing.assert_raises_regex(lgb.basic.LightGBMError, bad_shape_error_msg,
                                   bst.predict, sparse.csc_matrix(bad_X_test))
    with open(tname, "w+b") as f:
        dump_svmlight_file(bad_X_test, y_test, f)
    np.testing.assert_raises_regex(lgb.basic.LightGBMError, bad_shape_error_msg,
                                   bst.predict, tname)
    with open(tname, "w+b") as f:
        dump_svmlight_file(X_test, y_test, f, zero_based=False)
    np.testing.assert_raises_regex(lgb.basic.LightGBMError, bad_shape_error_msg,
                                   bst.predict, tname)


98
99
100
101
102
103
104
105
106
107
108
109
110
111
class NumpySequence(lgb.Sequence):
    def __init__(self, ndarray, batch_size):
        self.ndarray = ndarray
        self.batch_size = batch_size

    def __getitem__(self, idx):
        # The simple implementation is just a single "return self.ndarray[idx]"
        # The following is for demo and testing purpose.
        if isinstance(idx, numbers.Integral):
            return self.ndarray[idx]
        elif isinstance(idx, slice):
            if not (idx.step is None or idx.step == 1):
                raise NotImplementedError("No need to implement, caller will not set step by now")
            return self.ndarray[idx.start:idx.stop]
112
113
        elif isinstance(idx, list):
            return self.ndarray[idx]
114
        else:
115
            raise TypeError(f"Sequence Index must be an integer/list/slice, got {type(idx).__name__}")
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161

    def __len__(self):
        return len(self.ndarray)


def _create_sequence_from_ndarray(data, num_seq, batch_size):
    if num_seq == 1:
        return NumpySequence(data, batch_size)

    nrow = data.shape[0]
    seqs = []
    seq_size = nrow // num_seq
    for start in range(0, nrow, seq_size):
        end = min(start + seq_size, nrow)
        seq = NumpySequence(data[start:end], batch_size)
        seqs.append(seq)
    return seqs


@pytest.mark.parametrize('sample_count', [11, 100, None])
@pytest.mark.parametrize('batch_size', [3, None])
@pytest.mark.parametrize('include_0_and_nan', [False, True])
@pytest.mark.parametrize('num_seq', [1, 3])
def test_sequence(tmpdir, sample_count, batch_size, include_0_and_nan, num_seq):
    params = {'bin_construct_sample_cnt': sample_count}

    nrow = 50
    half_nrow = nrow // 2
    ncol = 11
    data = np.arange(nrow * ncol, dtype=np.float64).reshape((nrow, ncol))

    if include_0_and_nan:
        # whole col
        data[:, 0] = 0
        data[:, 1] = np.nan

        # half col
        data[:half_nrow, 3] = 0
        data[:half_nrow, 2] = np.nan

        data[half_nrow:-2, 4] = 0
        data[:half_nrow, 4] = np.nan

    X = data[:, :-1]
    Y = data[:, -1]

162
163
    npy_bin_fname = tmpdir / 'data_from_npy.bin'
    seq_bin_fname = tmpdir / 'data_from_seq.bin'
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178

    # Create dataset from numpy array directly.
    ds = lgb.Dataset(X, label=Y, params=params)
    ds.save_binary(npy_bin_fname)

    # Create dataset using Sequence.
    seqs = _create_sequence_from_ndarray(X, num_seq, batch_size)
    seq_ds = lgb.Dataset(seqs, label=Y, params=params)
    seq_ds.save_binary(seq_bin_fname)

    assert filecmp.cmp(npy_bin_fname, seq_bin_fname)

    # Test for validation set.
    # Select some random rows as valid data.
    rng = np.random.default_rng()  # Pass integer to set seed when needed.
179
    valid_idx = (rng.random(10) * nrow).astype(np.int32)
180
181
182
183
    valid_data = data[valid_idx, :]
    valid_X = valid_data[:, :-1]
    valid_Y = valid_data[:, -1]

184
185
186
    valid_npy_bin_fname = tmpdir / 'valid_data_from_npy.bin'
    valid_seq_bin_fname = tmpdir / 'valid_data_from_seq.bin'
    valid_seq2_bin_fname = tmpdir / 'valid_data_from_seq2.bin'
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202

    valid_ds = lgb.Dataset(valid_X, label=valid_Y, params=params, reference=ds)
    valid_ds.save_binary(valid_npy_bin_fname)

    # From Dataset constructor, with dataset from numpy array.
    valid_seqs = _create_sequence_from_ndarray(valid_X, num_seq, batch_size)
    valid_seq_ds = lgb.Dataset(valid_seqs, label=valid_Y, params=params, reference=ds)
    valid_seq_ds.save_binary(valid_seq_bin_fname)
    assert filecmp.cmp(valid_npy_bin_fname, valid_seq_bin_fname)

    # From Dataset.create_valid, with dataset from sequence.
    valid_seq_ds2 = seq_ds.create_valid(valid_seqs, label=valid_Y, params=params)
    valid_seq_ds2.save_binary(valid_seq2_bin_fname)
    assert filecmp.cmp(valid_npy_bin_fname, valid_seq2_bin_fname)


203
204
@pytest.mark.parametrize('num_seq', [1, 2])
def test_sequence_get_data(num_seq):
205
206
207
208
209
210
    nrow = 20
    ncol = 11
    data = np.arange(nrow * ncol, dtype=np.float64).reshape((nrow, ncol))
    X = data[:, :-1]
    Y = data[:, -1]

211
212
213
    seqs = _create_sequence_from_ndarray(data=X, num_seq=num_seq, batch_size=6)
    seq_ds = lgb.Dataset(seqs, label=Y, params=None, free_raw_data=False).construct()
    assert seq_ds.get_data() == seqs
214

215
216
217
    used_indices = np.random.choice(np.arange(nrow), nrow // 3, replace=False)
    subset_data = seq_ds.subset(used_indices).construct()
    np.testing.assert_array_equal(subset_data.get_data(), X[sorted(used_indices)])
218
219


220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
def test_chunked_dataset():
    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)

    chunk_size = X_train.shape[0] // 10 + 1
    X_train = [X_train[i * chunk_size:(i + 1) * chunk_size, :] for i in range(X_train.shape[0] // chunk_size + 1)]
    X_test = [X_test[i * chunk_size:(i + 1) * chunk_size, :] for i in range(X_test.shape[0] // chunk_size + 1)]

    train_data = lgb.Dataset(X_train, label=y_train, params={"bin_construct_sample_cnt": 100})
    valid_data = train_data.create_valid(X_test, label=y_test, params={"bin_construct_sample_cnt": 100})
    train_data.construct()
    valid_data.construct()


def test_chunked_dataset_linear():
    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)
    chunk_size = X_train.shape[0] // 10 + 1
    X_train = [X_train[i * chunk_size:(i + 1) * chunk_size, :] for i in range(X_train.shape[0] // chunk_size + 1)]
    X_test = [X_test[i * chunk_size:(i + 1) * chunk_size, :] for i in range(X_test.shape[0] // chunk_size + 1)]
    params = {"bin_construct_sample_cnt": 100, 'linear_tree': True}
    train_data = lgb.Dataset(X_train, label=y_train, params=params)
    valid_data = train_data.create_valid(X_test, label=y_test, params=params)
    train_data.construct()
    valid_data.construct()


247
248
249
250
251
252
253
254
def test_save_dataset_subset_and_load_from_file(tmp_path):
    data = np.random.rand(100, 2)
    params = {'max_bin': 50, 'min_data_in_bin': 10}
    ds = lgb.Dataset(data, params=params)
    ds.subset([1, 2, 3, 5, 8]).save_binary(tmp_path / 'subset.bin')
    lgb.Dataset(tmp_path / 'subset.bin', params=params).construct()


255
def test_subset_group():
256
257
258
    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'))
259
260
261
262
263
264
265
266
267
268
269
270
271
272
273
274
275
276
277
278
279
280
281
282
283
284
    lgb_train = lgb.Dataset(X_train, y_train, group=q_train)
    assert len(lgb_train.get_group()) == 201
    subset = lgb_train.subset(list(range(10))).construct()
    subset_group = subset.get_group()
    assert len(subset_group) == 2
    assert subset_group[0] == 1
    assert subset_group[1] == 9


def test_add_features_throws_if_num_data_unequal():
    X1 = np.random.random((100, 1))
    X2 = np.random.random((10, 1))
    d1 = lgb.Dataset(X1).construct()
    d2 = lgb.Dataset(X2).construct()
    with pytest.raises(lgb.basic.LightGBMError):
        d1.add_features_from(d2)


def test_add_features_throws_if_datasets_unconstructed():
    X1 = np.random.random((100, 1))
    X2 = np.random.random((100, 1))
    with pytest.raises(ValueError):
        d1 = lgb.Dataset(X1)
        d2 = lgb.Dataset(X2)
        d1.add_features_from(d2)
    with pytest.raises(ValueError):
285
        d1 = lgb.Dataset(X1).construct()
286
287
288
289
        d2 = lgb.Dataset(X2)
        d1.add_features_from(d2)
    with pytest.raises(ValueError):
        d1 = lgb.Dataset(X1)
290
        d2 = lgb.Dataset(X2).construct()
291
        d1.add_features_from(d2)
292
293


294
295
296
def test_add_features_equal_data_on_alternating_used_unused(tmp_path):
    X = np.random.random((100, 5))
    X[:, [1, 3]] = 0
297
    names = [f'col_{i}' for i in range(5)]
298
299
300
301
    for j in range(1, 5):
        d1 = lgb.Dataset(X[:, :j], feature_name=names[:j]).construct()
        d2 = lgb.Dataset(X[:, j:], feature_name=names[j:]).construct()
        d1.add_features_from(d2)
302
        d1name = tmp_path / "d1.txt"
303
304
        d1._dump_text(d1name)
        d = lgb.Dataset(X, feature_name=names).construct()
305
        dname = tmp_path / "d.txt"
306
307
308
309
310
311
        d._dump_text(dname)
        with open(d1name, 'rt') as d1f:
            d1txt = d1f.read()
        with open(dname, 'rt') as df:
            dtxt = df.read()
        assert dtxt == d1txt
Guolin Ke's avatar
Guolin Ke committed
312

313
314
315
316

def test_add_features_same_booster_behaviour(tmp_path):
    X = np.random.random((100, 5))
    X[:, [1, 3]] = 0
317
    names = [f'col_{i}' for i in range(5)]
318
319
320
321
322
    for j in range(1, 5):
        d1 = lgb.Dataset(X[:, :j], feature_name=names[:j]).construct()
        d2 = lgb.Dataset(X[:, j:], feature_name=names[j:]).construct()
        d1.add_features_from(d2)
        d = lgb.Dataset(X, feature_name=names).construct()
323
        y = np.random.random(100)
324
325
326
327
        d1.set_label(y)
        d.set_label(y)
        b1 = lgb.Booster(train_set=d1)
        b = lgb.Booster(train_set=d)
328
        for _ in range(10):
329
330
            b.update()
            b1.update()
331
332
        dname = tmp_path / "d.txt"
        d1name = tmp_path / "d1.txt"
333
334
335
336
337
338
339
340
341
342
343
344
345
346
        b1.save_model(d1name)
        b.save_model(dname)
        with open(dname, 'rt') as df:
            dtxt = df.read()
        with open(d1name, 'rt') as d1f:
            d1txt = d1f.read()
        assert dtxt == d1txt


def test_add_features_from_different_sources():
    pd = pytest.importorskip("pandas")
    n_row = 100
    n_col = 5
    X = np.random.random((n_row, n_col))
347
    xxs = [X, sparse.csr_matrix(X), pd.DataFrame(X)]
348
    names = [f'col_{i}' for i in range(n_col)]
349
350
351
352
353
    seq = _create_sequence_from_ndarray(X, 1, 30)
    seq_ds = lgb.Dataset(seq, feature_name=names, free_raw_data=False).construct()
    npy_list_ds = lgb.Dataset([X[:n_row // 2, :], X[n_row // 2:, :]],
                              feature_name=names, free_raw_data=False).construct()
    immergeable_dds = [seq_ds, npy_list_ds]
354
355
356
357
358
359
360
361
362
    for x_1 in xxs:
        # test that method works even with free_raw_data=True
        d1 = lgb.Dataset(x_1, feature_name=names, free_raw_data=True).construct()
        d2 = lgb.Dataset(x_1, feature_name=names, free_raw_data=True).construct()
        d1.add_features_from(d2)
        assert d1.data is None

        # test that method works but sets raw data to None in case of immergeable data types
        d1 = lgb.Dataset(x_1, feature_name=names, free_raw_data=False).construct()
363
364
365
        for d2 in immergeable_dds:
            d1.add_features_from(d2)
            assert d1.data is None
366
367
368

        # test that method works for different data types
        d1 = lgb.Dataset(x_1, feature_name=names, free_raw_data=False).construct()
369
        res_feature_names = deepcopy(names)
370
371
372
373
374
375
        for idx, x_2 in enumerate(xxs, 2):
            original_type = type(d1.get_data())
            d2 = lgb.Dataset(x_2, feature_name=names, free_raw_data=False).construct()
            d1.add_features_from(d2)
            assert isinstance(d1.get_data(), original_type)
            assert d1.get_data().shape == (n_row, n_col * idx)
376
            res_feature_names += [f'D{idx}_{name}' for name in names]
377
378
379
            assert d1.feature_name == res_feature_names


380
381
382
383
384
385
386
387
388
389
390
391
392
393
394
395
396
397
398
399
400
401
402
def test_add_features_does_not_fail_if_initial_dataset_has_zero_informative_features(capsys):

    arr_a = np.zeros((100, 1), dtype=np.float32)
    arr_b = np.random.normal(size=(100, 5))

    dataset_a = lgb.Dataset(arr_a).construct()
    expected_msg = (
        '[LightGBM] [Warning] There are no meaningful features which satisfy '
        'the provided configuration. Decreasing Dataset parameters min_data_in_bin '
        'or min_data_in_leaf and re-constructing Dataset might resolve this warning.\n'
    )
    log_lines = capsys.readouterr().out
    assert expected_msg in log_lines

    dataset_b = lgb.Dataset(arr_b).construct()

    original_handle = dataset_a.handle.value
    dataset_a.add_features_from(dataset_b)
    assert dataset_a.num_feature() == 6
    assert dataset_a.num_data() == 100
    assert dataset_a.handle.value == original_handle


403
404
405
406
def test_cegb_affects_behavior(tmp_path):
    X = np.random.random((100, 5))
    X[:, [1, 3]] = 0
    y = np.random.random(100)
407
    names = [f'col_{i}' for i in range(5)]
408
409
410
    ds = lgb.Dataset(X, feature_name=names).construct()
    ds.set_label(y)
    base = lgb.Booster(train_set=ds)
411
    for _ in range(10):
412
        base.update()
413
    basename = tmp_path / "basename.txt"
414
415
416
417
418
419
420
421
422
    base.save_model(basename)
    with open(basename, 'rt') as f:
        basetxt = f.read()
    # Set extremely harsh penalties, so CEGB will block most splits.
    cases = [{'cegb_penalty_feature_coupled': [50, 100, 10, 25, 30]},
             {'cegb_penalty_feature_lazy': [1, 2, 3, 4, 5]},
             {'cegb_penalty_split': 1}]
    for case in cases:
        booster = lgb.Booster(train_set=ds, params=case)
423
        for _ in range(10):
424
            booster.update()
425
        casename = tmp_path / "casename.txt"
426
427
428
429
430
431
432
433
434
435
        booster.save_model(casename)
        with open(casename, 'rt') as f:
            casetxt = f.read()
        assert basetxt != casetxt


def test_cegb_scaling_equalities(tmp_path):
    X = np.random.random((100, 5))
    X[:, [1, 3]] = 0
    y = np.random.random(100)
436
    names = [f'col_{i}' for i in range(5)]
437
438
439
440
441
442
443
444
445
446
447
448
    ds = lgb.Dataset(X, feature_name=names).construct()
    ds.set_label(y)
    # Compare pairs of penalties, to ensure scaling works as intended
    pairs = [({'cegb_penalty_feature_coupled': [1, 2, 1, 2, 1]},
              {'cegb_penalty_feature_coupled': [0.5, 1, 0.5, 1, 0.5], 'cegb_tradeoff': 2}),
             ({'cegb_penalty_feature_lazy': [0.01, 0.02, 0.03, 0.04, 0.05]},
              {'cegb_penalty_feature_lazy': [0.005, 0.01, 0.015, 0.02, 0.025], 'cegb_tradeoff': 2}),
             ({'cegb_penalty_split': 1},
              {'cegb_penalty_split': 2, 'cegb_tradeoff': 0.5})]
    for (p1, p2) in pairs:
        booster1 = lgb.Booster(train_set=ds, params=p1)
        booster2 = lgb.Booster(train_set=ds, params=p2)
449
        for _ in range(10):
450
451
            booster1.update()
            booster2.update()
452
        p1name = tmp_path / "p1.txt"
453
454
455
456
457
        # Reset booster1's parameters to p2, so the parameter section of the file matches.
        booster1.reset_parameter(p2)
        booster1.save_model(p1name)
        with open(p1name, 'rt') as f:
            p1txt = f.read()
458
        p2name = tmp_path / "p2.txt"
459
460
461
462
463
464
465
466
467
468
469
470
471
472
473
474
475
476
477
478
479
480
481
482
483
484
485
486
487
488
        booster2.save_model(p2name)
        with open(p2name, 'rt') as f:
            p2txt = f.read()
        assert p1txt == p2txt


def test_consistent_state_for_dataset_fields():

    def check_asserts(data):
        np.testing.assert_allclose(data.label, data.get_label())
        np.testing.assert_allclose(data.label, data.get_field('label'))
        assert not np.isnan(data.label[0])
        assert not np.isinf(data.label[1])
        np.testing.assert_allclose(data.weight, data.get_weight())
        np.testing.assert_allclose(data.weight, data.get_field('weight'))
        assert not np.isnan(data.weight[0])
        assert not np.isinf(data.weight[1])
        np.testing.assert_allclose(data.init_score, data.get_init_score())
        np.testing.assert_allclose(data.init_score, data.get_field('init_score'))
        assert not np.isnan(data.init_score[0])
        assert not np.isinf(data.init_score[1])
        assert np.all(np.isclose([data.label[0], data.weight[0], data.init_score[0]],
                                 data.label[0]))
        assert data.label[1] == pytest.approx(data.weight[1])
        assert data.feature_name == data.get_feature_name()

    X, y = load_breast_cancer(return_X_y=True)
    sequence = np.ones(y.shape[0])
    sequence[0] = np.nan
    sequence[1] = np.inf
489
    feature_names = [f'f{i}'for i in range(X.shape[1])]
490
491
492
493
494
495
496
497
498
499
    lgb_data = lgb.Dataset(X, sequence,
                           weight=sequence, init_score=sequence,
                           feature_name=feature_names).construct()
    check_asserts(lgb_data)
    lgb_data = lgb.Dataset(X, y).construct()
    lgb_data.set_label(sequence)
    lgb_data.set_weight(sequence)
    lgb_data.set_init_score(sequence)
    lgb_data.set_feature_name(feature_names)
    check_asserts(lgb_data)
500
501
502
503
504
505
506
507


def test_choose_param_value():

    original_params = {
        "local_listen_port": 1234,
        "port": 2222,
        "metric": "auc",
508
509
        "num_trees": 81,
        "n_iter": 13,
510
511
512
513
514
515
516
517
518
519
520
    }

    # should resolve duplicate aliases, and prefer the main parameter
    params = lgb.basic._choose_param_value(
        main_param_name="local_listen_port",
        params=original_params,
        default_value=5555
    )
    assert params["local_listen_port"] == 1234
    assert "port" not in params

521
522
    # should choose the highest priority alias and set that value on main param
    # if only aliases are used
523
524
525
526
527
    params = lgb.basic._choose_param_value(
        main_param_name="num_iterations",
        params=params,
        default_value=17
    )
528
    assert params["num_iterations"] == 13
529
    assert "num_trees" not in params
530
    assert "n_iter" not in params
531
532
533
534
535
536
537
538
539
540
541
542
543
544

    # should use the default if main param and aliases are missing
    params = lgb.basic._choose_param_value(
        main_param_name="learning_rate",
        params=params,
        default_value=0.789
    )
    assert params["learning_rate"] == 0.789

    # all changes should be made on copies and not modify the original
    expected_params = {
        "local_listen_port": 1234,
        "port": 2222,
        "metric": "auc",
545
546
        "num_trees": 81,
        "n_iter": 13,
547
548
    }
    assert original_params == expected_params
549
550


551
552
553
554
555
556
557
558
559
560
561
562
563
564
565
566
567
568
569
570
571
572
573
574
575
576
577
578
579
580
581
582
583
584
585
586
def test_choose_param_value_preserves_nones():

    # preserves None found for main param and still removes aliases
    params = lgb.basic._choose_param_value(
        main_param_name="num_threads",
        params={
            "num_threads": None,
            "n_jobs": 4,
            "objective": "regression"
        },
        default_value=2
    )
    assert params == {"num_threads": None, "objective": "regression"}

    # correctly chooses value when only an alias is provided
    params = lgb.basic._choose_param_value(
        main_param_name="num_threads",
        params={
            "n_jobs": None,
            "objective": "regression"
        },
        default_value=2
    )
    assert params == {"num_threads": None, "objective": "regression"}

    # adds None if that's given as the default and param not found
    params = lgb.basic._choose_param_value(
        main_param_name="min_data_in_leaf",
        params={
            "objective": "regression"
        },
        default_value=None
    )
    assert params == {"objective": "regression", "min_data_in_leaf": None}


587
588
589
590
591
592
593
594
595
596
597
598
599
600
601
602
603
604
605
606
607
608
609
610
611
612
613
614
615
616
@pytest.mark.parametrize("objective_alias", lgb.basic._ConfigAliases.get("objective"))
def test_choose_param_value_objective(objective_alias):
    # If callable is found in objective
    params = {objective_alias: dummy_obj}
    params = lgb.basic._choose_param_value(
        main_param_name="objective",
        params=params,
        default_value=None
    )
    assert params['objective'] == dummy_obj

    # Value in params should be preferred to the default_value passed from keyword arguments
    params = {objective_alias: dummy_obj}
    params = lgb.basic._choose_param_value(
        main_param_name="objective",
        params=params,
        default_value=mse_obj
    )
    assert params['objective'] == dummy_obj

    # None of objective or its aliases in params, but default_value is callable.
    params = {}
    params = lgb.basic._choose_param_value(
        main_param_name="objective",
        params=params,
        default_value=mse_obj
    )
    assert params['objective'] == mse_obj


617
@pytest.mark.parametrize('collection', ['1d_np', '2d_np', 'pd_float', 'pd_str', '1d_list', '2d_list'])
618
@pytest.mark.parametrize('dtype', [np.float32, np.float64])
619
620
621
622
623
624
625
626
627
628
629
630
631
632
633
def test_list_to_1d_numpy(collection, dtype):
    collection2y = {
        '1d_np': np.random.rand(10),
        '2d_np': np.random.rand(10, 1),
        'pd_float': np.random.rand(10),
        'pd_str': ['a', 'b'],
        '1d_list': [1] * 10,
        '2d_list': [[1], [2]],
    }
    y = collection2y[collection]
    if collection.startswith('pd'):
        if not PANDAS_INSTALLED:
            pytest.skip('pandas is not installed')
        else:
            y = pd_Series(y)
634
635
    if isinstance(y, np.ndarray) and len(y.shape) == 2:
        with pytest.warns(UserWarning, match='column-vector'):
636
            lgb.basic._list_to_1d_numpy(y, dtype=np.float32, name="list")
637
638
639
        return
    elif isinstance(y, list) and isinstance(y[0], list):
        with pytest.raises(TypeError):
640
            lgb.basic._list_to_1d_numpy(y, dtype=np.float32, name="list")
641
642
643
        return
    elif isinstance(y, pd_Series) and y.dtype == object:
        with pytest.raises(ValueError):
644
            lgb.basic._list_to_1d_numpy(y, dtype=np.float32, name="list")
645
        return
646
    result = lgb.basic._list_to_1d_numpy(y, dtype=dtype, name="list")
647
648
    assert result.size == 10
    assert result.dtype == dtype
649
650
651
652
653
654
655
656
657
658
659
660
661
662
663


@pytest.mark.parametrize('init_score_type', ['array', 'dataframe', 'list'])
def test_init_score_for_multiclass_classification(init_score_type):
    init_score = [[i * 10 + j for j in range(3)] for i in range(10)]
    if init_score_type == 'array':
        init_score = np.array(init_score)
    elif init_score_type == 'dataframe':
        if not PANDAS_INSTALLED:
            pytest.skip('Pandas is not installed.')
        init_score = pd_DataFrame(init_score)
    data = np.random.rand(10, 2)
    ds = lgb.Dataset(data, init_score=init_score).construct()
    np.testing.assert_equal(ds.get_field('init_score'), init_score)
    np.testing.assert_equal(ds.init_score, init_score)
664
665
666
667
668
669
670
671
672
673
674
675


def test_smoke_custom_parser(tmp_path):
    data_path = Path(__file__).absolute().parents[2] / 'examples' / 'binary_classification' / 'binary.train'
    parser_config_file = tmp_path / 'parser.ini'
    with open(parser_config_file, 'w') as fout:
        fout.write('{"className": "dummy", "id": "1"}')

    data = lgb.Dataset(data_path, params={"parser_config_file": parser_config_file})
    with pytest.raises(lgb.basic.LightGBMError,
                       match="Cannot find parser class 'dummy', please register first or check config format"):
        data.construct()
676
677
678
679
680
681


def test_param_aliases():
    aliases = lgb.basic._ConfigAliases.aliases
    assert isinstance(aliases, dict)
    assert len(aliases) > 100
682
    assert all(isinstance(i, list) for i in aliases.values())
683
684
685
    assert all(len(i) >= 1 for i in aliases.values())
    assert all(k in v for k, v in aliases.items())
    assert lgb.basic._ConfigAliases.get('config', 'task') == {'config', 'config_file', 'task', 'task_type'}
686
687
688
    assert lgb.basic._ConfigAliases.get_sorted('min_data_in_leaf') == [
        'min_data_in_leaf', 'min_data', 'min_samples_leaf', 'min_child_samples', 'min_data_per_leaf'
    ]
689
690
691
692
693
694
695


def _bad_gradients(preds, _):
    return np.random.randn(len(preds) + 1), np.random.rand(len(preds) + 1)


def _good_gradients(preds, _):
696
    return np.random.randn(*preds.shape), np.random.rand(*preds.shape)
697
698
699
700
701
702
703
704
705
706
707
708
709
710
711
712
713
714
715
716
717


def test_custom_objective_safety():
    nrows = 100
    X = np.random.randn(nrows, 5)
    y_binary = np.arange(nrows) % 2
    classes = [0, 1, 2]
    nclass = len(classes)
    y_multiclass = np.arange(nrows) % nclass
    ds_binary = lgb.Dataset(X, y_binary).construct()
    ds_multiclass = lgb.Dataset(X, y_multiclass).construct()
    bad_bst_binary = lgb.Booster({'objective': "none"}, ds_binary)
    good_bst_binary = lgb.Booster({'objective': "none"}, ds_binary)
    bad_bst_multi = lgb.Booster({'objective': "none", "num_class": nclass}, ds_multiclass)
    good_bst_multi = lgb.Booster({'objective': "none", "num_class": nclass}, ds_multiclass)
    good_bst_binary.update(fobj=_good_gradients)
    with pytest.raises(ValueError, match=re.escape("number of models per one iteration (1)")):
        bad_bst_binary.update(fobj=_bad_gradients)
    good_bst_multi.update(fobj=_good_gradients)
    with pytest.raises(ValueError, match=re.escape(f"number of models per one iteration ({nclass})")):
        bad_bst_multi.update(fobj=_bad_gradients)
718
719


720
@pytest.mark.parametrize('dtype', [np.float32, np.float64])
721
722
@pytest.mark.parametrize('feature_name', [['x1', 'x2'], 'auto'])
def test_no_copy_when_single_float_dtype_dataframe(dtype, feature_name):
723
724
725
726
727
728
    pd = pytest.importorskip('pandas')
    X = np.random.rand(10, 2).astype(dtype)
    df = pd.DataFrame(X)
    built_data = lgb.basic._data_from_pandas(df, feature_name, None, None)[0]
    assert built_data.dtype == dtype
    assert np.shares_memory(X, built_data)
729
730


731
@pytest.mark.parametrize('feature_name', [['x1'], [42], 'auto'])
732
def test_categorical_code_conversion_doesnt_modify_original_data(feature_name):
733
734
    pd = pytest.importorskip('pandas')
    X = np.random.choice(['a', 'b'], 100).reshape(-1, 1)
735
736
    column_name = 'a' if feature_name == 'auto' else feature_name[0]
    df = pd.DataFrame(X.copy(), columns=[column_name], dtype='category')
737
    data = lgb.basic._data_from_pandas(df, feature_name, None, None)[0]
738
    # check that the original data wasn't modified
739
    np.testing.assert_equal(df[column_name], X[:, 0])
740
    # check that the built data has the codes
741
    np.testing.assert_equal(df[column_name].cat.codes, data[:, 0])
742
743


744
745
746
747
748
749
750
751
@pytest.mark.parametrize('min_data_in_bin', [2, 10])
def test_feature_num_bin(min_data_in_bin):
    X = np.vstack([
        np.random.rand(100),
        np.array([1, 2] * 50),
        np.array([0, 1, 2] * 33 + [0]),
        np.array([1, 2] * 49 + 2 * [np.nan]),
        np.zeros(100),
752
        np.random.choice([0, 1], 100),
753
    ]).T
754
755
    n_continuous = X.shape[1] - 1
    feature_name = [f'x{i}' for i in range(n_continuous)] + ['cat1']
756
757
758
759
    ds_kwargs = {
        "params": {'min_data_in_bin': min_data_in_bin},
        "categorical_feature": [n_continuous],  # last feature
    }
760
    ds = lgb.Dataset(X, feature_name=feature_name, **ds_kwargs).construct()
761
762
763
764
765
766
    expected_num_bins = [
        100 // min_data_in_bin + 1,  # extra bin for zero
        3,  # 0, 1, 2
        3,  # 0, 1, 2
        4,  # 0, 1, 2 + nan
        0,  # unused
767
        3,  # 0, 1 + nan
768
769
770
    ]
    actual_num_bins = [ds.feature_num_bin(i) for i in range(X.shape[1])]
    assert actual_num_bins == expected_num_bins
771
772
773
774
775
776
777
778
    # test using defined feature names
    bins_by_name = [ds.feature_num_bin(name) for name in feature_name]
    assert bins_by_name == expected_num_bins
    # test using default feature names
    ds_no_names = lgb.Dataset(X, **ds_kwargs).construct()
    default_names = [f'Column_{i}' for i in range(X.shape[1])]
    bins_by_default_name = [ds_no_names.feature_num_bin(name) for name in default_names]
    assert bins_by_default_name == expected_num_bins
779
780
781
782
783
784
785
786
787
788
    # check for feature indices outside of range
    num_features = X.shape[1]
    with pytest.raises(
        lgb.basic.LightGBMError,
        match=(
            f'Tried to retrieve number of bins for feature index {num_features}, '
            f'but the valid feature indices are \\[0, {num_features - 1}\\].'
        )
    ):
        ds.feature_num_bin(num_features)
789
790
791
792
793
794
795
796


def test_feature_num_bin_with_max_bin_by_feature():
    X = np.random.rand(100, 3)
    max_bin_by_feature = np.random.randint(3, 30, size=X.shape[1])
    ds = lgb.Dataset(X, params={'max_bin_by_feature': max_bin_by_feature}).construct()
    actual_num_bins = [ds.feature_num_bin(i) for i in range(X.shape[1])]
    np.testing.assert_equal(actual_num_bins, max_bin_by_feature)
797
798
799
800
801
802
803
804
805
806
807
808


def test_set_leaf_output():
    X, y = load_breast_cancer(return_X_y=True)
    ds = lgb.Dataset(X, y)
    bst = lgb.Booster({'num_leaves': 2}, ds)
    bst.update()
    y_pred = bst.predict(X)
    for leaf_id in range(2):
        leaf_output = bst.get_leaf_output(tree_id=0, leaf_id=leaf_id)
        bst.set_leaf_output(tree_id=0, leaf_id=leaf_id, value=leaf_output + 1)
    np.testing.assert_allclose(bst.predict(X), y_pred + 1)