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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
    189 
    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
10

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]}

fit_params={"early_stopping_rounds":42, 
            "eval_metric" : "mae", 
            "eval_set" : [[testX, testY]]}

model = xgb.XGBRegressor()
gridsearch = GridSearchCV(model, paramGrid, verbose=1 ,
         fit_params=fit_params,
         cv=TimeSeriesSplit(n_splits=cv).get_n_splits([trainX,trainY]))
gridsearch.fit(trainX,trainY)
  • 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

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