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I am trying to create neural network and I am using aforge framework. I have 3 inputs, 20 outputs data. inputs like this: 0.4397 1.4492 0.57 , 0.4296 1.5271 0.615 etc. And outputs data like this: [0,0,0,0,1,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0] , [0,1,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0] etc. I am calculating outputs look like: enter image description here

I know, outputs must getting [0,1] but here [-1,1]. I have normalized train data(divide 100) and output data(divide 100).

What is my problem? Thanks in advance. (sorry my english)

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why do you think the output are supposed to be in the range of [0,1] ? –  user Jun 17 at 9:54
    
Backpropagation function getting [0,1] output. Not - value. I think my problem is normalization and denormalization but I don't know how can i succeed. –  user3425879 Jun 17 at 10:05
    
Please add to your question your code –  user Jun 17 at 11:02
    
I have just told problem. Code about 2500 lines. You shouldn't want to look, be sure. –  user3425879 Jun 18 at 3:52
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1 Answer 1

up vote 0 down vote accepted

The output of each node of a multi-layer perceptron (which i suppose you are using) does not lie in [0, 1] or [-1, 1], but in [-∞, +∞]. In this way MLPs can perform either regression or classification. In your case, since you are using it for a classification problem, the output is passed through an activation function, which limits the output to a specific interval.

Two commonly used such functions are the sigmoid function and the hyperbolic tangent function, which map the output to [0, 1] and [-1, 1] respectively. In your case, the framework most likely uses the hyperbolic functions as default activation. You find that parameter and it is to sigmoid/logistic or something similar.

PS: Regardless of the above, are you sure the problem you are trying to solve is formulated correctly?? 3 inputs and 20 outputs seems very unlikely for a classification problem.

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It's true. "3 inputs and 20 outputs seems very unlikely for a classification problem." :( –  user3425879 Jun 18 at 17:32
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