I have written my own custom performance function, that is a cross entropy function with some modifications, called augmented cross entropy function.
My performance function itselft is a sum of two functions: cross entropy function F and a penalty function P, the formula given below:
where B and vectors e1 and e2 are just some constants and
w is a weight matrix (
i for hidden layer neurons,
j for input layer neurons).
I've implemented dy and dx derivatives, not being very sure about the dx derivative (where x is a result of getx function - it holds all weight and bias information). I assumed that the dx derivative of my performance function for a weight
wij will be equal to derivative of the penalty function:
Then I started training my neural network with trainbfg function and found out it does not learn anything. Message was "Line search did not find new minimum". From trainbfg description:
Each variable is adjusted according to the following: X = X + a*dX; where dX is the search direction. The parameter a is selected to minimize the performance along the search direction.
It turned out that parameter
a is always calculated as 0 by the default search function, srchbac (line search). I assume it has something to do with my performance function being wrongfully implemented, because when I set mse as the performance function,
a is calculated properly.
What is the reason of the problems during locating a new minimum by the
srchbac function? Just to know where I should look for as for a second day I found nothing.
The x vector consists of input-hidden connections' weight values first and then the rest biases and weights. I calculate the dx derivative of the weights vector with the following formula:
res = 2 .* E1 .* b .* W ./( 1 + b .* W.^2).^2 + 2 .* E2 .* W ;
and the rest of the values I set to 0 (so that
res has the same length as the x vector).