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Is it possible to perfom a grid_search (to get the best SVM's C) and yet specify the sample_weight with scikit-learn?

Here's the error I'm confronted to:

gs = GridSearchCV(svm.SVC(C=1), [{'kernel': ['linear'], 'C': [.1, 1, 10], 'probability': [True], 'sample_weight': sw_train}])

gs.fit(Xtrain, ytrain)

>> ValueError: Invalid parameter sample_weight for estimator SVC

Thanks

[EDIT]

Found it thanks to FP: I needed to get the last version of SKL and use the following:

gs.fit(Xtrain, ytrain, fit_params={'sample_weight': sw_train})

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If you have the answer, please post it as an answer and accept it. Otherwise the question will lie around as unanswered. –  joergl Oct 24 '12 at 15:07
    
I confirm the fit_params trick is the right answer. Please answer to yourself and validate your answer. –  ogrisel Feb 16 '13 at 0:06

1 Answer 1

Just trying to close out this long hanging question...

You needed to get the last version of SKL and use the following:

gs.fit(Xtrain, ytrain, fit_params={'sample_weight': sw_train})
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