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I am using scikit module recursive feature elimination with cross val(RFECV) for feature selection. The code snippet is as follows:

svc = SVC(kernel="linear")

rfecv = RFECV(estimator=svc, step=20, cv=StratifiedKFold(y, 2),scoring='roc_auc')


I get an error ValueError: Array contains NaN or infinity when I run my code in sklearn/utils/validation.py.

The following check in validation.py

X.dtype.char in np.typecodes['AllFloat'] and not np.isfinite(X.sum()) and not np.isfinite(X).all() 

returns False when I test it on X. X is not sparse.So ideally I should not get this error.

Please can someone let me know what may be the cause of the error.


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Did you scale your features using preprocessing.StandardScaler? You should, before feeding them to an SVM. Not doing so can cause this error (as well as very slow training). –  larsmans Feb 17 '14 at 10:38
If X is sparse it shouldn't be possible to use the StandardScaler but just scale, right? –  foebu Oct 23 '14 at 14:41
Please always report the complete traceback otherwise there is no way to be sure where this happens. –  ogrisel Aug 27 at 12:51
If the data is sparse, just ensure that the distribution of the values are not too heavy tailed. If there are and are all positive, then taking np.log(1 + X) or np.sqrt(X) might help SVM behave better. –  ogrisel Aug 27 at 12:53

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