Hidden Layer Activations in NN Toolbox
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I'm looking for a non-manual way to compute the layer activations of an arbitrary neural network created with the Neural Network Toolbox.
Consider following example for detailed problem description:
[x,t] = simplefit_dataset; % toy data
net = fitnet(5); % initialize network
net.inputs{1}.processFcns = {}; % don't pre-process data
net.outputs{2}.processFcns = {}; % don't post-process data
net = train(net,x,t); % train network
The output of the network can be obtained using the sim function or manually:
testX = 0.5; % test value
testYnntbx = sim(net,testX) % automatic computation of network output
testYmanual = net.LW{2} ... % manual computation of network output
*(tansig(net.IW{1}*testX+net.b{1})) ...
+net.b{2}
The activations of the neurons in the hidden layer are:
testAmanual = tansig(net.IW{1}*testX+net.b{1})
I'm looking for a way to get the layer activations without manually specifying the equations, analogous to the sim function.
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