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My last lecture on ANN's was a while ago but I'm currently facing a project where I would want to use one.

So, the basics - like what type (a mutli-layer feedforward network), trained by an evolutionary algorithm (thats a given by the project), how many input-neurons (8) and how many ouput-neurons (7) - are set. But I'm currently trying to figure out how many hidden layers I should use and how many neurons in each of these layers (the ea doesn't modify the network itself, but only the weights).

Is there a general rule or maybe a guideline on how to figure this out?

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up vote 2 down vote accepted

A typical neural net relies on hidden layers in order to converge on a particular problem solution. A hidden layer of about 10 neurons is standard for networks with few input and output neurons. However, a trial an error approach often works best. Since the neural net will be trained by a genetic algorithm the number of hidden neurons may not play a significant role especially in training since its the weights and biases on the neurons which would be modified by an algorithm like back propogation.

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I agree with the trial and error approach. More neurons in the hidden layer(s) can sometimes help the network to arrive at a more accurate answer, but takes much longer to train and propagate. Additional hidden layers add to the complexity. Graphing total error over time (iterations) for different numbers of hidden neurons can help you to understand the best number of hidden neurons to use to arrive at an accurate answer, but too many neurons will take longer to arrive at only a slightly better answer. – Narthring Jan 5 '13 at 3:14
This maybe comes rather late, but I just recently had the time to continue to work on this thing. For fixed problem-sets this is was the easiest way to solve it and after some trial an error I also got a "feeling" on how to adjust the size. – mageta Jan 31 '13 at 2:02

The best approach for this problem is to implement the cascade correlation algorithm, in which hidden nodes are sequentially added as necessary to reduce the error rate of the network. This has been demonstrated to be very useful in practice.

An alternative, of course, is a brute-force test of various values. I don't think simple answers such as "10 or 20 is good" are meaningful because you are directly addressing the separability of the data in high-dimensional space by the basis function.

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As rcarter suggests, trial and error might do fine, but there's another thing you could try.

You could use genetic algorithms in order to determine the number of hidden layers or and the number of neurons in them.

I did similar things with a bunch of random forests, to try and find the best number of trees, branches, and parameters given to each tree, etc.

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