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I am consufed on how to normalize the inputs / outputs for a regression neural network using (Gaussian normalization ? ) mean & standart deviation normalization technique :

Most importantly, I Normalize from which data ?

Let me explain :

let's say i have these training data on a 2 input neurons, 2 hidden neurons , 1 output neuron:

[input1 : 10][input2: 5]
[input1:  30][input2: 255]

do i normalize by column(neuron), or from all the inputs data ? Is the mean for input neuron 1 =

(10+30)/2 

or

(10+30+5+255)/4 ? 

Try both with weird result using the typical XOR example (only 1s and 0s in the traning data), where i was actually loosing great accuracy when normalizing.

share|improve this question
    
Imagine you have car's price on input1 and its color (somehow encoded) on input2 - obviously adding these two doesn't make any sense. Anyway, this is off-topic. Please try CrossValidated or ComputerScience. – BartoszKP Aug 18 '14 at 20:41
up vote 0 down vote accepted

Normalization is to keep each dimension of input data in a certain range so usually it should be done in column. There are several ways for normalization. For example, linear normalization: It's the most common an easiest method and often used when the data is centered. It's counted by (V-Vmin)/(Vmax-V). And Gaussian normalization is counted by (V-Vavg)/Std.

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alright thanks a lot :) any idea why using normalization on XOR data woûd recude accuracy ? – Charles-Ugo Brouillard Aug 20 '14 at 16:13
    
Actually each dimension in XOR data is in the same range (its value is 0 or 1) so it's unnecessary to use normalization. – Shizhe Chen Aug 21 '14 at 0:41

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