I'm trying to implement a custom scoring function for RidgeClassifierCV in scikit-learn. This involves passing a custom scoring function as the score_func when initializing the RidgeClassifierCV object. I expected the score_func to take in categorical values as input for y_true and y_pred. Instead, however, floating point values are passed in as y_true and y_pred. The size of the y vectors is equal to the number of classes times the number of training examples, rather than simply having a y vector with length equivalent to the number of training examples.

Can I somehow force categorical predictions to be passed into the custom scoring function, or do I have to deal with the raw weights? If I do have to deal directly with the raw weights, is the index of the maximum value in a slice of the vector of outputs equivalent to the predicted class?

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    This is another bug :) - found yesterday as a direct consequence to the other one you uncovered.
    – eickenberg
    Jun 19, 2014 at 21:06
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    As a hacky workaround to this, since you are using your own score function, I propose that you threshold the continuous values at 0. Positive values become your first class label and negative ones the second. (Or are you using more than 2 labels?)
    – eickenberg
    Jun 19, 2014 at 21:09
  • And again, thanks for reporting!
    – eickenberg
    Jun 19, 2014 at 21:16
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    This question still shows up as unanswered. Can we close this without marking it as "does not belong here"? Oct 16, 2016 at 22:55
  • Agreed... @eickenberg would you mind posting a bug update as an "answer" so that this comes off the top of the unanswered #python list?
    – emunsing
    Oct 19, 2016 at 15:39

1 Answer 1


This is a bug that has been fixed.

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