I am implementing a classification using MultiLayer Perceptrons.
I need to do normalization of input data. I was wondering which is a better method for MultiLayer Perceptron approach. The input feature have different ranges as per below
feature1 - (0-1) feature2 - (1-100) feature2 - (1-100000) . . .
- Max-Min Normalization: Range(0,1) Activation Function - Sigmoid
normalized_data = (data-min)/(max-min)
- standard deviation normalization : Range (-1,1) - Not Sure Sigmoid will be good choice.. Hyperbolic tangent??
normalized_data = data-mean/sd