I have a network which has 3 inputs, 2 hidden layers (6 neurons each, Sigmoid activation function) and one neuron as output. I expect my network to be continuous, as I'm not looking at a classification network (hope that makes sense).
My inputs represent days in a year (0-365 range). I actually normalize them to 0-1 range (because of sigmoid).
My problem is the following: however small the training error gets, the actual values when reusing the training set are not correct. Depending on the number of epochs I run I get different outcomes.
If I train my network more than a few thousand times, I only get two possible outcomes. If I train it less, I get more possible outcomes, but the values are nowhere near what I expect.
I've read that for a continuous network, it's better too use two hidden layers.
I'm not sure what I'm doing wrong. If you can be of any help, that would be great. Let me know if you need more details.
I reduced the number of elements in the training set. This time the network converged in a small number of epochs. Below are the training errors:
Iteration #1. Error: 0.0011177179783950614
Iteration #2. Error: 0.14650660686728395
Iteration #3. Error: 0.0011177179783950614
Iteration #4. Error: 0.023927628368006597
Iteration #5. Error: 0.0011177179783950614
Iteration #6. Error: 0.0034446569367911364
Iteration #7. Error: 0.0011177179783950614
Iteration #8. Error: 8.800816244191594E-4
Final Error: 0.0011177179783950614