MATLAB Answers

re-train a pre-trained autoencoder

52 views (last 30 days)
cedric MAGUETA RUIVO on 19 Aug 2016
Commented: Chris Tostado on 30 Mar 2020
Hello, I want to retrain an autoencoder with a different set of images. autoencoder classe seems to not allowed this, so i transform my autoencoder into a classical neural network (with network function). but now i need to encode my data to train the next layer. How can i do that?

Answers (1)

Grzegorz Knor
Grzegorz Knor on 17 Jul 2017
Edited: Grzegorz Knor on 18 Jul 2017
To encode data from retrained network you need to create new network, which contains only encoder layer. Please see the code (it is based on TrainSparseAutoencoderExample):
% load dataset
X = abalone_dataset;
% split it into two parts
X1 = X(:,1:2085);
X2 = X(:,2086:end);
% Train a first sparse autoencoder with default settings.
autoenc = trainAutoencoder(X1);
% Reconstruct inputs.
XReconstructed1 = predict(autoenc,X1);
% Compute the mean squared reconstruction error.
mseError1 = mse(X1-XReconstructed1)
% convert existed autoenc to network:
net = network(autoenc);
% retrain autoenc(net):
net = train(net,X2,X2);
% Reconstruct inputs.
XReconstructed2 = net(X2);
% Compute the mean squared reconstruction error.
mseError2 = mse(X2-XReconstructed2)
% compare biases
bar([net.b{1} autoenc.EncoderBiases])
% compare weights
% extract features from autoencoder
features1 = encode(autoenc,X1);
% create encoder form trained network
encoder = network;
% Define topology
encoder.numInputs = 1;
encoder.numLayers = 1;
encoder.inputConnect(1,1) = 1;
encoder.outputConnect = 1;
encoder.biasConnect = 1;
% Set values for labels = 'Encoder';
encoder.layers{1}.name = 'Encoder';
% Copy parameters from input network
encoder.inputs{1}.size = net.inputs{1}.size;
encoder.layers{1}.size = net.layers{1}.size;
encoder.layers{1}.transferFcn = net.layers{1}.transferFcn;
encoder.IW{1,1} = net.IW{1,1};
encoder.b{1} = net.b{1};
% Set a training function
encoder.trainFcn = net.trainFcn;
% Set the input
encoderStruct = struct(encoder);
networkStruct = struct(net);
encoderStruct.inputs{1} = networkStruct.inputs{1};
encoder = network(encoderStruct);
% extract features from net
features2 = encoder(X1);
% compare
If you use stacked autoencoders use encode function.
Here is a good example .
  1 Comment
Chris Tostado
Chris Tostado on 30 Mar 2020
At the end of your post you mention "If you use stacked autoencoders use encode function." However, I'm not quite sure what you mean here. Do you mean if one were to use the "stack" function to combine multiple autoencoders, that instead of using:
% extract features from net
features2 = encoder(X1);
we should use:
% extract features from net
features2 = encode(encoder, X1); ???
The stack function, from my understanding creates a network type object in which case, the encode function no longer works. Can you please advise? Thanks!

Sign in to comment.

Community Treasure Hunt

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

Start Hunting!

Translated by