Hidden layer activations with Neural Network Toolbox

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Martijn Onderwater
Martijn Onderwater el 23 de Sept. de 2011
Respondida: Greg Heath el 2 de Sept. de 2016
Hello,
I have recently started using Matlab's Neural Network Toolbox, after some years of working with Netlab. Does anybody know how to get the activations (=output of the transfer function) of the hidden layers?
So if I create a 4-2-4 network:
net = feedforwardnet(2,'trainlm');
net = configure(net,randn(4,10),randn(4,10));
inp = randn(4,1);
out = sim(net, inp);
How can I then find the output of the hidden layer?
Regards,
Martijn

Respuesta aceptada

Greg Heath
Greg Heath el 2 de Sept. de 2016
The easiest way to obtain the hidden layer output of a I-H-O net is to just use the weights to create a net with no hidden layer with topology I-H.
Hope this helps.
Thank you for formally accepting my answer
Greg

Más respuestas (2)

Martijn Onderwater
Martijn Onderwater el 23 de Sept. de 2011
Ah, got it. I calculated the activations myself, but I missed the fact that MNNT pre- and postprocesses data. See this post for a solution.

HunterE
HunterE el 25 de Ag. de 2016
You can also use genFunction to generate a .m file which should exactly reproduce the model in your net object. Then you can edit the resulting .m file to cause it to return the activations. For larger networks this is more practical than re-coding it yourself.
However, is there really no easier way to access the hidden layer activations??? If so this is a serious oversight!!

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