I'm trying to train an 8-bit neural network to output XOR of its inputs. I'm using ffnet library (http://ffnet.sourceforge.net/). For low number of input bits (up to 4) backpropagation produces expected results. For 8 bits, NN seems to 'converge', meaning that it outputs the same value for any input. I'm using a multilayer NN: inputs, hidden layer, output, plus bias node.
Am I doing something wrong? Does this NN need to be of certain shape, to be able to learn to XOR?
This is the code I'm using:
def experiment(bits, input, solution, iters): conec = mlgraph( (bits, bits, 1) ) net = ffnet(conec) net.randomweights() net.train_momentum(input, solution, eta=0.5, momentum=0.0, maxiter=iters) net.test(input, solution, iprint=2)
momentum=0.0 to get pure back-propagation.
This is a part of the results I get:
Testing results for 256 testing cases: OUTPUT 1 (node nr 17): Targets vs. outputs: 1 1.000000 0.041238 2 1.000000 0.041125 3 1.000000 0.041124 4 1.000000 0.041129 5 1.000000 0.041076 6 1.000000 0.041198 7 0.000000 0.041121 8 1.000000 0.041198
It goes on like this for every vector (256 values)