# coding: utf-8 import json import pickle import numpy as np import pandas as pd from sklearn.metrics import mean_squared_error import lightgbm as lgb print('Loading data...') # load or create your dataset df_train = pd.read_csv('../binary_classification/binary.train', header=None, sep='\t') df_test = pd.read_csv('../binary_classification/binary.test', header=None, sep='\t') W_train = pd.read_csv('../binary_classification/binary.train.weight', header=None)[0] W_test = pd.read_csv('../binary_classification/binary.test.weight', header=None)[0] y_train = df_train[0] y_test = df_test[0] X_train = df_train.drop(0, axis=1) X_test = df_test.drop(0, axis=1) num_train, num_feature = X_train.shape # create dataset for lightgbm # if you want to re-use data, remember to set free_raw_data=False lgb_train = lgb.Dataset(X_train, y_train, weight=W_train, free_raw_data=False) lgb_eval = lgb.Dataset(X_test, y_test, reference=lgb_train, weight=W_test, free_raw_data=False) # specify your configurations as a dict params = { 'boosting_type': 'gbdt', 'objective': 'binary', 'metric': 'binary_logloss', 'num_leaves': 31, 'learning_rate': 0.05, 'feature_fraction': 0.9, 'bagging_fraction': 0.8, 'bagging_freq': 5, 'verbose': 0 } # generate feature names feature_name = ['feature_' + str(col) for col in range(num_feature)] print('Starting training...') # feature_name and categorical_feature gbm = lgb.train(params, lgb_train, num_boost_round=10, valid_sets=lgb_train, # eval training data feature_name=feature_name, categorical_feature=[21]) print('Finished first 10 rounds...') # check feature name print('7th feature name is:', lgb_train.feature_name[6]) print('Saving model...') # save model to file gbm.save_model('model.txt') print('Dumping model to JSON...') # dump model to JSON (and save to file) model_json = gbm.dump_model() with open('model.json', 'w+') as f: json.dump(model_json, f, indent=4) # feature names print('Feature names:', gbm.feature_name()) # feature importances print('Feature importances:', list(gbm.feature_importance())) print('Loading model to predict...') # load model to predict bst = lgb.Booster(model_file='model.txt') # can only predict with the best iteration (or the saving iteration) y_pred = bst.predict(X_test) # eval with loaded model print("The rmse of loaded model's prediction is:", mean_squared_error(y_test, y_pred) ** 0.5) print('Dumping and loading model with pickle...') # dump model with pickle with open('model.pkl', 'wb') as fout: pickle.dump(gbm, fout) # load model with pickle to predict with open('model.pkl', 'rb') as fin: pkl_bst = pickle.load(fin) # can predict with any iteration when loaded in pickle way y_pred = pkl_bst.predict(X_test, num_iteration=7) # eval with loaded model print("The rmse of pickled model's prediction is:", mean_squared_error(y_test, y_pred) ** 0.5) # continue training # init_model accepts: # 1. model file name # 2. Booster() gbm = lgb.train(params, lgb_train, num_boost_round=10, init_model='model.txt', valid_sets=lgb_eval) print('Finished 10 - 20 rounds with model file...') # decay learning rates # learning_rates accepts: # 1. list/tuple with length = num_boost_round # 2. function(curr_iter) gbm = lgb.train(params, lgb_train, num_boost_round=10, init_model=gbm, learning_rates=lambda iter: 0.05 * (0.99 ** iter), valid_sets=lgb_eval) print('Finished 20 - 30 rounds with decay learning rates...') # change other parameters during training gbm = lgb.train(params, lgb_train, num_boost_round=10, init_model=gbm, valid_sets=lgb_eval, callbacks=[lgb.reset_parameter(bagging_fraction=[0.7] * 5 + [0.6] * 5)]) print('Finished 30 - 40 rounds with changing bagging_fraction...') # self-defined objective function # f(preds: array, train_data: Dataset) -> grad: array, hess: array # log likelihood loss def loglikelihood(preds, train_data): labels = train_data.get_label() preds = 1. / (1. + np.exp(-preds)) grad = preds - labels hess = preds * (1. - preds) return grad, hess # self-defined eval metric # f(preds: array, train_data: Dataset) -> name: string, eval_result: float, is_higher_better: bool # binary error # NOTE: when you do customized loss function, the default prediction value is margin # This may make built-in evalution metric calculate wrong results # For example, we are doing log likelihood loss, the prediction is score before logistic transformation # Keep this in mind when you use the customization def binary_error(preds, train_data): labels = train_data.get_label() preds = 1. / (1. + np.exp(-preds)) return 'error', np.mean(labels != (preds > 0.5)), False gbm = lgb.train(params, lgb_train, num_boost_round=10, init_model=gbm, fobj=loglikelihood, feval=binary_error, valid_sets=lgb_eval) print('Finished 40 - 50 rounds with self-defined objective function and eval metric...') # another self-defined eval metric # f(preds: array, train_data: Dataset) -> name: string, eval_result: float, is_higher_better: bool # accuracy # NOTE: when you do customized loss function, the default prediction value is margin # This may make built-in evalution metric calculate wrong results # For example, we are doing log likelihood loss, the prediction is score before logistic transformation # Keep this in mind when you use the customization def accuracy(preds, train_data): labels = train_data.get_label() preds = 1. / (1. + np.exp(-preds)) return 'accuracy', np.mean(labels == (preds > 0.5)), True gbm = lgb.train(params, lgb_train, num_boost_round=10, init_model=gbm, fobj=loglikelihood, feval=[binary_error, accuracy], valid_sets=lgb_eval) print('Finished 50 - 60 rounds with self-defined objective function ' 'and multiple self-defined eval metrics...') print('Starting a new training job...') # callback def reset_metrics(): def callback(env): lgb_eval_new = lgb.Dataset(X_test, y_test, reference=lgb_train) if env.iteration - env.begin_iteration == 5: print('Add a new valid dataset at iteration 5...') env.model.add_valid(lgb_eval_new, 'new_valid') callback.before_iteration = True callback.order = 0 return callback gbm = lgb.train(params, lgb_train, num_boost_round=10, valid_sets=lgb_train, callbacks=[reset_metrics()]) print('Finished first 10 rounds with callback function...')