Timedelaynet output calculation principle

1 visualización (últimos 30 días)
Tingting Zhang
Tingting Zhang el 8 de Sept. de 2019
Comentada: Tingting Zhang el 10 de Sept. de 2019
I have built a focused time-delay NN (two delays, 2 layers, hidden layer size of 2) and changed all the inputweights and layerweights to be zero (no bias is used). I would expect all zero output, but why the code give me nonzero values. Is there anybody can give suggestions on what's wrong? The simple code is shown as following:
clear;
numtaps = 2;
hiddenLayerSize = 2;
dyn_net = timedelaynet(1:numtaps,hiddenLayerSize);
dyn_net.trainFcn = 'trainlm';
dyn_net.layers{1}.transferFcn = 'tansig';
dyn_net.initFcn = 'initlay';
dyn_net.performFcn = 'mse';
dyn_net.biasConnect = [0;0];
dyn_net.trainParam.epochs = 1;
inputs = 0:0.1:1;
targets= 0:0.1:1;
inputs_1c = num2cell(inputs,1);
targets_1c = num2cell(targets,1);
[p,Pi,Ai,t] = preparets(dyn_net,inputs_1c,targets_1c);
[dyn_net,dyn_tr] = train(dyn_net,p,t,Pi,Ai);
dyn_net.IW{1,1} =[0 0;0 0];
dyn_net.LW{2,1} =[0 0];
output = dyn_net(p,Pi);
outputs1 = cell2mat(output); % I should expect zero, but the outputs are all 0.6.
dyn_net.LW{2,1}*tansig(dyn_net.IW{1,1}*(inputs(6:7)).') % This calculation gives me zero

Respuestas (1)

Greg Heath
Greg Heath el 9 de Sept. de 2019
You did not include tHe 2 biases.
Hope this helps.
Greg
THANK YOU FOR FORMALLY ACCEPTING MY ANSWER
  1 comentario
Tingting Zhang
Tingting Zhang el 10 de Sept. de 2019
Hi Greg,
Thanks for your answer. The configure of the NN is shown as following.Capture.JPG
I intend not to include the bias just want to check the feedforward output calculation. I would expect that to be:
dyn_net.LW{2,1}*tansig(dyn_net.IW{1,1}*(inputs(k-1:-1:k-2)).').
But it is not the same as what I expect. So I manually change the inputweights and layerweights to be zero after training (before training gives me an error), and found nonzero output, that's weird.
I have also tried to include the bias as you suggested, the problem is still there.

Iniciar sesión para comentar.

Categorías

Más información sobre Sequence and Numeric Feature Data Workflows en Help Center y File Exchange.

Etiquetas

Community Treasure Hunt

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

Start Hunting!

Translated by