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Let's say you have 3 inputs: A, B, C. Can an artificial neural network (not necessarily feed froward) learn this pattern?

if C > k
   output is A
   output is B

Are there curtain types of networks, which can or which are well suited for this type of problem?

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It can. This sounds like the classic 3 coin EM problem which can be viewed as a neural network. –  Mikhail Mar 17 '12 at 23:29

1 Answer 1

up vote 2 down vote accepted

Yes, that's a relatively easy pattern for a feedforward neural network to learn.

You will need at least 3 layers I think assuming sigmoid functions:

  • 1st layer can test C>k (and possibly also scale A and B down into the linear range of the sigmoid function)
  • 2nd layer can calculate A/0 and 0/B conditional on the 1st layer
  • 3rd (output) layer can perform a weighted sum to give A/B (you may need to make this layer linear rather than sigmoid depending on the scale of values you want)

Having said that, if you genuinely know the structure of you problem and what kind of calculation you want to perform, then Neural Networks are unlikely to be the most effective solution: they are better in situations when you don't know much about the exact calculations required to model the functions / relationships.

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This is obviously only small subpart of my problem. I am using NEAT to train the model. I thought, I'd first try if it can learn a number of subproblems, before I throw it at the real problem, which will probability take a couple of days computing time. This was the first subproblem I tried and it failed horribly. Maybe I need to tune the parameters further. –  Maarten Mar 18 '12 at 8:00

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