I'm trying to understand how to train a multilayer; however, I'm having some trouble figuring out how to determine a suitable network architecture--i.e., number of nodes/neurons in each layer of the network.
For a specific task, I have four input sources that can each input one of three states. I guess that would mean four input neurons firing either 0, 1 or 2, but as far as I'm told, input should be kept binary?
Furthermore am I having some issues choosing on the amount of neurons in the hidden layer. Any comments would be great.