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I am using cross_val_score to compute the mean score for a regressor. Here's a small snippet.

from sklearn.linear_model import LinearRegression
from sklearn.model_selection import cross_val_score 

cross_val_score(LinearRegression(), X, y_reg, cv = 5)

Using this I get an array of scores. I would like to know how the scores on the validation set (as returned in the array above) differ from those on the training set, to understand whether my model is over-fitting or under-fitting.

Is there a way of doing this with the cross_val_score object?

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  • Pass in your training set and see. – BallpointBen Jun 21 '17 at 15:49
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Why would you want that? cross_val_score(cv=5) does that for you as it splits your train data 10 times and verifies accuracy scores on 5 test subsets. This method already serves as a way to prevent your model from over-fitting.

Anyway, if you are eager to verify accuracy on your validation data, then you have to fit your LinearRegression first on X and y_reg.

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    Hi E.Z. I thought it would be possible to predict on the training set used in the X-Validation iterator as well to get an understanding of any potential overfitting. Perhaps this is not possible. – Iwan Thomas Jun 23 '17 at 8:22
  • Potential overfitting is easily neglected when using cross_val_score as it trains and predicts on different subsets of X and then validates accuracy. Those test subsets are like X_validation in your case. But fitting with your scenario is rather obsolete. You can read more about the process of over-fitting here: neuralnetworksanddeeplearning.com/…. It relates more to the neural networks section but the meaning is absolutely the same. Thank you. – E.Z. Jun 23 '17 at 8:55
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    @E.Z. do we prevent overfitting always ? – iva123 Apr 16 at 13:07
  • Cross-validation is a well-established technique - it works consistently. – E.Z. Apr 16 at 23:03
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You can use cross_validate instead of cross_val_score
according to doc:

The cross_validate function differs from cross_val_score in two ways -

  • It allows specifying multiple metrics for evaluation.
  • It returns a dict containing training scores, fit-times and score-times in addition to the test score.

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