I'm implementing a neural network in Java, which only uses fully connected layers.
I'm training the net with a simple sine function, where x
(in [0, 1]) is given as an input, and
(1 + Math.sin(x * 2 * Math.PI))/2
as an output.
As shown on the image, the error looks to be decreasing to around 10% which, as far as I know, isn't too bad for such a network. The plot shows the mean values for each 200 iterations or so.
When testing specific values, I experience a huge range of error. They go from say 0.1% to thousands of percents. Though on average they look to be around the value given by the training curve, the network truly fails around every ten tests.
My question is: is it "normal" for the net to have such an unstable behaviour? Is it common for such a problem to get this range of errors, even though they don't seem to come up "so" often? I thought the response would be "smoother", which is why I'm asking.
Any feedback appreciated, thanks a lot!
Edit:
1) I get the error percentage in the testing phase with:
Math.abs((networkOutput-expectedOutput)/expectedOutput)*100
. I only use the expectedOutput and not this error percentage for training.
2) About the training: in short, I run this loop:
double input = Math.random();
double output = trainingFunction(input);
net.backPropagate(input, output);
with trainingFunction returning the normalized sine function seen above, backPropagate first executing the network and then using the gradient descent method and the derivative of the sigmoid to compute the weights' delta.
3) The topology is 1 input neuron -> 20 hidden neurons -> 1 output neuron. I also notice the same kind of results when using more hidden layers.