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# Code snippet to train lightgbm models quickly, using the number of iterations based on CV | |
import lightgbm as lgb | |
lgb_dftrain = lgb.Dataset(features_train, target_train) | |
params = {'boosting_type': 'gbdt', | |
'objective': 'binary', | |
'enable_bundle': True, | |
'max_conflict_rate': 0, | |
'max_depth': 20, | |
'min_split_gain': 1, | |
'lambda_l2': 1, | |
'lambda_l1': 1, | |
'subsample': 0.5, | |
'subsample_freq': 1, | |
'feature_fration': 0.5, | |
'metric': ['binary_logloss', 'binary_error'], | |
'learning_rate': 0.03} | |
cv_hist = lgb.cv(params, | |
lgb_dftrain, | |
verbose_eval=10, | |
num_boost_round=20000, | |
nfold=3, | |
stratified=True, | |
early_stopping_rounds=50, | |
show_stdv=False) | |
best_iter = np.argmin(cv_hist['binary_error-mean']) | |
gbm_model = lgb.train(params, | |
lgb_dftrain, | |
verbose_eval=50000, | |
num_boost_round=best_iter, | |
valid_sets=lgb_dftrain) |
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