I am trying to program a neural network and I am now testing it. I have simplified it down to 2 training examples with 2 inputs and 1 input.
Input : Output 1,0 : 1 1,1 : 0
I cycle through forward and back-propogation 1,000 times and the network output always converges to 1 or 0, depending on where the initialized random weights start. No matter what input I put in, the output is the same. It does not learn.
I'm not sure how to seek help with out overloading you will all of my code, so I will post what I am doing:
Create random initial weights For i = 1 to 1000 For j = 1 to Samples in Training Set (2) Set activations (Sigmoid function) Forward-prop delta = sum of (deltas in next layer * weights connecting this node with next deltas) * act*(1-act) Weights = Weights + lambda(.05) * delta * x(i)
Is there anything that I seem to be doing wrong? Is there some/all of the code that I should post? Any suggestions on what else I should test? I have been testing everything by hand in Excel, and everything seems to work the way I expect (forward-prop, delta calculations, etc)