Let us say I have chosen a single training document from a training set. I have put it into feature vector X for my chosen features.
I am trying to do:
self.clf = LogisticRegression() self.clf.fit(X, Y)
My Y would be something like:
[0 0 0 1 1 0 1 0 0 1 0]
I would like to train my one single model so that it best fits each of the 11 output values simultaneously. This doesn't seem to work for
fit as I get a
unhashable type 'list' error because it is expecting a single value which is ether binary or multi-class but does not allow for more than one value.
Is there anyway to do this with sci-kit learn?