I made a neural network that also have Back Propagation.it has 5 nodes in input layer,6 nodes in hidden layer,1 node in output layer and have random weights and i use
sigmoid as activation function.
i have two set of data for input.
for example :
13.5 22.27 0 0 0 desired value=0.02 7 19 4 7 2 desired value=0.03
now i train the network with 5000 iteration or iteration will stop if the error
desired - calculated output value) is less than or equal to 0.001.
the output value of first iteration for each input set is about 60 And it will decrease in each iteration.
now the problem is that the second set of inputs(that has desired value of 0.03),cause to stop iteration because of calculated output value of 3.001 but the first set of inputs did not arrived to desired value of it(that is 0.02) and its output is about 0.03 .
LMS algorithm andchanged the error threshold 0.00001 to find correct error value,but now output value of last iteration for both 0.03 and 0.02 desired value is between 0.023 and 0.027 and that is incorrect yet.