# Should I Scale My Equation Output Data?

With this link i implemented a neural network to calculate `y=x*x`(x is input and y is output) equation.I took 1 unit in input layer,4 unit in hidden layer and 1 unit in output layer. But When I enter for example `2` as input(so desired output is 4) i got output value 0.99999999.... also this happens for all other input numbers bigger than 1(Its output is correct with value between 0 and 1). also I used this link and changed it to solve my equation,but the output was the same!

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I guess source code would help to replicate your situation. From other hand, you could try to use AForge framework for this: aforgenet.com/framework/docs/html/… –  Giedrius Jan 3 '13 at 14:06
thanks,i just want to know Is my number of NeuralNetwork layers and units in it is correct or not? –  Arash Jan 3 '13 at 14:09
This shouldn't have been closed, I don't believe. The answer is that your network likely returns a result between 0 and 1. You need to train it to a scaled value. So, for example, you might need to set the potential range of x to be from 0 to 100. You would then multiply the result of the network by 100. Inputs also need to be scaled in a similar way. So, for example, if you value ranges are 0-100, then your input for 4 would actually be 0.04 and you would train the answer as 0.02. Or an input of 0.09 would train the answer as 0.03, etc. Does that make sense? –  Pete Jan 3 '13 at 14:11
@Arash in a perceptron, "correct" is somewhat subjective; does it perform reasonably, when trained appropriately and tested against a separate validation set? –  Marc Gravell Jan 3 '13 at 14:15
@Arash: faqs.org/faqs/ai-faq/neural-nets/part2 - Go about 2/3 of the way down to the section titled: "Subject: Should I normalize/standardize/rescale the data?" Hopefully that will clarify. And I was mistaken. Your input doesn't need to be scaled, but your output does. –  Pete Jan 3 '13 at 14:30