How to add a layer to a neural network while keeping the weights and biases of a trained layer constant?
6 views (last 30 days)
Show older comments
I would like to first train a single layer neural network, then make another neural network that has the same weights and biases as the trained one, but also has one more layer with weights that are all ones. I am getting errors like "net.LW{2,1} must be a 2-by-2 matrix.". How can I fix the code below and still do what I would like?
Alternatively, how can I add one more layer to the neural network without changing the weights on the existing layer/s or the performance?
images = loadMNISTImages('train-images.idx3-ubyte'); % initialize figure
labels = loadMNISTLabels('train-labels.idx1-ubyte'); % initialize figure
labels = labels'; % transpose
labels(labels==0)=10; % dummyvar function doesn´t take zeroes
labels=dummyvar(labels)';
x=images;
t=labels;
[~,n]=size(x);
net = patternnet(2);
net = configure(net,x,t);
net.trainParam.epochs = 10;
net = train(net,x,t);
y=net(x);
perf1 = perform(net,t,y)
net2 = patternnet([2,2]);
net2= configure (net2, x,t);
net2.IW{1,1}=net.IW{1,1};
net2.LW{3,2}=ones(size(net2.LW{3,2}));
net2.LW{2,1}=net.LW{2,1};
net2.b{1,1}=net.b{1,1};
net2.b{3,1}=ones(size(net2.b{3,1}));
net2.b{2,1}=net.b{2,1};
0 Comments
Answers (1)
Shounak Mitra
on 12 Apr 2019
Hi,
Re: Alternatively, how can I add one more layer to the neural network without changing the weights on the existing layer/s or the performance?
What you're asking is kind of similar to the basis of transfer learning where we take a network, replace the last few layers (or edit some other layers) with the ones keeping the output as per your requirement. In your case, there's a shape mismatch where net.LW{2,1} should be a 2x2 matrix that needs to be consistent with the input dimension of [2,2].
--
Shounak
0 Comments
See Also
Categories
Find more on Sequence and Numeric Feature Data Workflows in Help Center and File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!