# coding: utf-8 from pathlib import Path import pandas as pd import lightgbm as lgb if lgb.compat.MATPLOTLIB_INSTALLED: import matplotlib.pyplot as plt else: raise ImportError('You need to install matplotlib and restart your session for plot_example.py.') print('Loading data...') # load or create your dataset regression_example_dir = Path(__file__).absolute().parents[1] / 'regression' df_train = pd.read_csv(str(regression_example_dir / 'regression.train'), header=None, sep='\t') df_test = pd.read_csv(str(regression_example_dir / 'regression.test'), header=None, sep='\t') 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) # create dataset for lightgbm lgb_train = lgb.Dataset(X_train, y_train) lgb_test = lgb.Dataset(X_test, y_test, reference=lgb_train) # specify your configurations as a dict params = { 'num_leaves': 5, 'metric': ('l1', 'l2'), 'verbose': 0 } evals_result = {} # to record eval results for plotting print('Starting training...') # train gbm = lgb.train(params, lgb_train, num_boost_round=100, valid_sets=[lgb_train, lgb_test], feature_name=[f'f{i + 1}' for i in range(X_train.shape[-1])], categorical_feature=[21], evals_result=evals_result, callbacks=[lgb.log_evaluation(10)]) print('Plotting metrics recorded during training...') ax = lgb.plot_metric(evals_result, metric='l1') plt.show() print('Plotting feature importances...') ax = lgb.plot_importance(gbm, max_num_features=10) plt.show() print('Plotting split value histogram...') ax = lgb.plot_split_value_histogram(gbm, feature='f26', bins='auto') plt.show() print('Plotting 54th tree...') # one tree use categorical feature to split ax = lgb.plot_tree(gbm, tree_index=53, figsize=(15, 15), show_info=['split_gain']) plt.show() print('Plotting 54th tree with graphviz...') graph = lgb.create_tree_digraph(gbm, tree_index=53, name='Tree54') graph.render(view=True)