i am trying to do hyperparemeter search with using scikit-learn's GridSearchCV on XGBoost. During gridsearch i'd like it to early stop, since it reduce search time drastically and (expecting to) have better results on my prediction/regression task. I am using XGBoost via its Scikit-Learn API.

    model = xgb.XGBRegressor()
    GridSearchCV(model, paramGrid, verbose=verbose ,fit_params={'early_stopping_rounds':42}, cv=TimeSeriesSplit(n_splits=cv).get_n_splits([trainX, trainY]), n_jobs=n_jobs, iid=iid).fit(trainX,trainY)

I tried to give early stopping parameters with using fit_params, but then it throws this error which is basically because of lack of validation set which is required for early stopping:

/opt/anaconda/anaconda3/lib/python3.5/site-packages/xgboost/callback.py in callback(env=XGBoostCallbackEnv(model=<xgboost.core.Booster o...teration=4000, rank=0, evaluation_result_list=[]))
    187         else:
    188             assert env.cvfolds is not None
    190     def callback(env):
    191         """internal function"""
--> 192         score = env.evaluation_result_list[-1][1]
        score = undefined
        env.evaluation_result_list = []
    193         if len(state) == 0:
    194             init(env)
    195         best_score = state['best_score']
    196         best_iteration = state['best_iteration']

How can i apply GridSearch on XGBoost with using early_stopping_rounds?

note: model is working without gridsearch, also GridSearch works without 'fit_params={'early_stopping_rounds':42}

  • What is the error? Please post full stack trace. Also, is the code working without gridSearch, only with XGBRegressor.fit()? – Vivek Kumar Mar 24 '17 at 7:56
  • yes, code is working without gridsearch, also works without 'fit_params={'early_stopping_rounds':42}' – ayyayyekokojambo Mar 24 '17 at 8:00
  • You still havent updated the stack trace. What is the error? – Vivek Kumar Mar 24 '17 at 9:16
  • @VivekKumar problem is about the methodology, not strictly about the traceback. i am asking "how to use gridsearch on xgboost with using early_stopping_rounds" full traceback is irrelevant in this case. – ayyayyekokojambo Mar 26 '17 at 8:43
  • How are we supposed to help if we dont even know what the error is. Neither have you exactly posted what the error is, nor the stack trace. – Vivek Kumar Mar 26 '17 at 10:23

When using early_stopping_rounds you also have to give eval_metric and eval_set as input parameter for the fit method. Early stopping is done via calculating the error on an evaluation set. The error has to decrease every early_stopping_rounds otherwise the generation of additional trees is stopped early.

See the documentation of xgboosts fit method for details.

Here you see a minimal fully working example:

import xgboost as xgb
from sklearn.model_selection import GridSearchCV
from sklearn.model_selection import TimeSeriesSplit

cv = 2

trainX= [[1], [2], [3], [4], [5]]
trainY = [1, 2, 3, 4, 5]

# these are the evaluation sets
testX = trainX 
testY = trainY

paramGrid = {"subsample" : [0.5, 0.8]}

            "eval_metric" : "mae", 
            "eval_set" : [[testX, testY]]}

model = xgb.XGBRegressor()
gridsearch = GridSearchCV(model, paramGrid, verbose=1 ,
  • 3
    thanks for reply, it works. but giving pre-defined eval_set is against the nature of the cross validation i guess. – ayyayyekokojambo Mar 31 '17 at 13:14
  • I guess what you mean is that in real applications you have to make sure eval_set and train set are not overlapping or are the same as here - should have added that. I used the train set just for the sake of simplicity. Early stopping based on the train data does not prevent overfitting. – glao Mar 31 '17 at 13:25
  • 3
    @glao: the eval set should be the hold-out set of the cross-validation process to make everything work as intended. – Michael M Nov 23 '17 at 8:58
  • 1
    nowadays "fit_params" is not recommendable because it is going to be deprecated. – lbcommer Dec 11 '17 at 16:57
  • Thanks @MichaelM, and how exactly can we do that? Any help – Vasim Mar 22 at 6:14

Your Answer

By clicking "Post Your Answer", you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.