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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) . . .

  1. Max-Min Normalization: Range(0,1) Activation Function - Sigmoid

normalized_data = (data-min)/(max-min)

  1. standard deviation normalization : Range (-1,1) - Not Sure Sigmoid will be good choice.. Hyperbolic tangent??

normalized_data = data-mean/sd

Thanks, Atish

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1 Answer 1

If you want to normalize every row of your training dataset, the appropriate method is mapminmax method from Neural Network toolbox.

If you tend to normalize based on each column (feature), there are too many ways. If your dataset consists of different boundary, it is better to normalize between [-1 1], otherwise [0 1] is appropriate.

The normalization method between [-1 1] can be coded:

function xNorm = Normalization(x,MinX,MaxX)
% x is data, MinX is minimum values in each column and MaxX is maximum values in each column

xNorm = (x - MinX) / (MaxX - MinX) * 2 - 1;

end

xNorm is normalized input data between -1 and 1.

Another solution is normc function, which normalize the columns of a matrix.

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Gaussian function is another most appropriate normalization method which try to takes into consideration mean and Std. of the distributed data. –  BlueBit Dec 11 '13 at 17:22
1  
Thanks for your answer. If we normalize between [-1 1].. then should I change my activation function from sigmoid to hyperbolic?? –  alex Dec 29 '13 at 10:33
    
The hyperbolic tangent function provides similar scaling to the sigmoid activation function; however, the hyperbolic tangent activation function has a range of [-1 1]. So, it is better to apply hyperbolic. Another idea is that, since hyperbolic tangent activation function has a derivative characteristic, it can also produce output in range of [0 1]. –  BlueBit Dec 29 '13 at 10:38
    
Thanks @Bluebit for your answer. It is very helpful. –  alex Jan 2 at 7:34
    
Do we need to normalize the output also ?? I have a 5 class classification problem. They take values as following. [1 0 0 0 0] or [0 0 1 0 0] –  alex Jan 6 at 19:53

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