Why the gradient descent algorithm increases in each epoch?

Hy everyone
I am training a neural network using the algorithm gradient descendent with momentum, I have been used different combinations of Learning rate and momentum, but the gradient is increasing, why?
This is the structure of my program:
  • inputDelays = (1:2);
  • hiddenSizes = [3 2 2];
  • net = narnet(inputDelays, hiddenSizes);
  • net.layers{1}.transferFcn = 'mytransfer';
  • net.layers{2}.transferFcn = 'mytransfer';
  • net.layers{3}.transferFcn = 'mytransfer';
  • net.layers{4}.transferFcn = 'purelin';
  • net.layers{6}.size=1;
  • net.trainFcn = 'traingdm'
  • net.divideParam.trainRatio = 0.8;
  • net.divideParam.valRatio = 0.1;
  • net.divideParam.testRatio = 0.1;
  • net.trainParam.epochs= 60000;
  • net.trainParam.max_fail = 60;
  • net.trainParam.lr = 0.1;
  • net.trainParam.mc = 0.9;
  • net.trainParam.goal=1e-4;
First I used a logsig activation function and I get a decrement gradient, but when i use a custom activation function to approximate a logsin, i get a increase gradiente
Can someone help me, please.

 Accepted Answer

1. Use as many defaults as possible
2.Don't use the custom activation function.

More Answers (0)

Categories

Find more on Deep Learning Toolbox in Help Center and File Exchange

Asked:

on 3 Mar 2015

Answered:

on 3 Mar 2015

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!