I can't get my neural network to perform well at all. It is supposed to classify a 21-bit encoded input into binary yes or no outputs. The division of yes:no targets is roughly 20:80. At first I had a small data set, so I acquiesced to it outputting close to 100% 'no'. But now I have ~20,000 records, and it still outputs 'no' ~100% of the time. Why is it incapable of learning the rule for classifying an input as 'yes', does anyone know what I am doing wrong?
My input vector is 21x18942. My target vector is 2x18942. I don't do anything fancy with the neural network, the code is simply
a = sim(net,targets);
[net,tr] = train(net,inputs,targets);
outputs = net(inputs);
and I have tried other standard neural networks available within matlab, e.g.
net = feedforwardnet(10, 'traingd'); with the same result.
Does anyone have an idea what I am doing wrong, or if there is some sort of limitation to these matlab neural network toolboxes that is causing a problem?
Any thoughts here would be very much appreciated