I am trying to fit OneVsAll Classification output in training data , rows of output adds upto 1 .
One possible way is to read all the rows and find which column has highest value and prepare data for training .
y = [[0.2,0.8,0],[0,1,0],[0,0.3,0.7]] can be reduced to
y = [b,b,c] , considering
a,b,c as corresponding class of the columns
Is there a function in scikit-learn which helps to achieve such transformations?