Gradient of loss for variational autoencoder?

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LPep
LPep el 17 de Nov. de 2022
Editada: Richard el 25 de Nov. de 2022
Hi, I have the following code for a variational autoencoder. My data is sequence data, not images, so 'Train' consists of ~5,000 univariate sequences, each around 400 observations long. When I run the below code, 'genGrad' is coming up as entirely 0s (not NaNs) and I'm just getting the same loss value every time over multiple epochs. Very unfamiliar with dl in MatLab and not sure where I'm off here.
inputsize = height(Train);
R = 2;
numLatentChannels = 2;
layersE1 = layerGraph([
sequenceInputLayer(inputsize,"Name","input",'Normalization','none')
fullyConnectedLayer(150*R,"Name","fc_1") %R can be any number/ factor
leakyReluLayer(0.01,"Name","leakyrelu_1")
fullyConnectedLayer(100*R,"Name","fc_2")
leakyReluLayer(0.01,"Name","leakyrelu_2")
fullyConnectedLayer(50*R,"Name","fc_3")
leakyReluLayer(0.01,"Name","leakyrelu_3")
fullyConnectedLayer(25*R,"Name","fc_4")
leakyReluLayer(0.01,"Name","leakyrelu_4")
fullyConnectedLayer(10*R,"Name","fc_5")
leakyReluLayer(0.01,"Name","leakyrelu_5")
fullyConnectedLayer(5*R,"Name","fc_6")
leakyReluLayer(0.01,"Name","leakyrelu_6")
fullyConnectedLayer(2*numLatentChannels)
]);
%% Decoder
numInputChannels = size(Train,1);
outputsize = height(Train);
layersD = layerGraph([
sequenceInputLayer(numLatentChannels,"Name","Dinput")
fullyConnectedLayer(5*R,"Name","fc_ou2")
leakyReluLayer(0.01,"Name","leakyrelu_ou2")
fullyConnectedLayer(10*R,"Name","fc_ou3")
leakyReluLayer(0.01,"Name","leakyrelu_ou3")
fullyConnectedLayer(25*R,"Name","fc_ou4")
leakyReluLayer(0.01,"Name","leakyrelu_ou4")
fullyConnectedLayer(50*R,"Name","fc_ou5")
leakyReluLayer(0.01,"Name","leakyrelu_ou5")
fullyConnectedLayer(100*R,"Name","fc_ou6")
leakyReluLayer(0.01,"Name","leakyrelu_ou6")
fullyConnectedLayer(150*R,"Name","fc_ou7")
leakyReluLayer(0.01,"Name","leakyrelu_ou7")
fullyConnectedLayer(outputsize,"Name","fc_16")
]);
%% create networks from layers
encoderNet1 = dlnetwork(layersE1);
decoderNet = dlnetwork(layersD);
%%
miniBatchSize = 64;
numTrainSeq = width(Train);
%Set training options
executionEnvironment = "auto"; % set execution environment
dsTrain = arrayDatastore(Train,IterationDimension=2);
numOutputs = 1;
mbq = minibatchqueue(dsTrain,numOutputs, ...
MiniBatchSize = miniBatchSize, ...
MiniBatchFormat="CT",...
MiniBatchFcn=@preprocessMiniBatch, ...
PartialMiniBatch="discard");
numEpochs = 50; % Num of epochs
lr = 1e-4; % Learning rate
numIterationsperEpoch = ceil(numTrainSeq/miniBatchSize); % Num of Iteration per epoch
numIterations = numEpochs * numIterationsperEpoch;
avgGradientsEncoder = [];
avgGradientsSquaredEncoder = [];
avgGradientsDecoder = [];
avgGradientsSquaredDecoder = [];
monitor = trainingProgressMonitor( ...
Metrics="Loss", ...
Info="Epoch", ...
XLabel="Iteration");
epoch = 0;
iteration = 0;
%Train the model
while epoch < numEpochs && ~monitor.Stop
epoch = epoch + 1
shuffle(mbq);
while hasdata(mbq) && ~monitor.Stop
iteration = iteration + 1
XBatch = next(mbq);
if (executionEnvironment == "auto" && canUseGPU) || executionEnvironment == "gpu"
XBatch = gpuArray(XBatch);
end
compressed = forward(encoderNet1, XBatch);
d = size(compressed,1)/2;
zMean = compressed(1:d,:);
zLogvar = compressed(1+d:end,:);
sz = size(zMean);
epsilon = randn(sz);
sigma = exp(.5 * zLogvar);
z = epsilon .* sigma + zMean;
z = reshape(z, [sz]);
zSampled = dlarray(z, 'CT');
% calculate gradient of loss
[infGrad, genGrad] = dlfeval(@modelGradients1, encoderNet1, decoderNet, XBatch, zSampled,zMean,zLogvar);
% update parameters of Encoder/Decoder
[decoderNet.Learnables, avgGradientsDecoder, avgGradientsSquaredDecoder] = ...
adamupdate(decoderNet.Learnables, ...
genGrad, avgGradientsDecoder, avgGradientsSquaredDecoder, iteration, lr);
[encoderNet1.Learnables, avgGradientsEncoder, avgGradientsSquaredEncoder] = ...
adamupdate(encoderNet1.Learnables, ...
infGrad, avgGradientsEncoder, avgGradientsSquaredEncoder, iteration, lr);
end
% Update the training progress monitor.
recordMetrics(monitor,iteration,Loss=loss);
updateInfo(monitor,Epoch=epoch + " of " + numEpochs);
monitor.Progress = 100*iteration/numIterations;
end
function [infGrad, genGrad] = modelGradients1(encoderNet1, decoderNet, XBatch, zSampled,zMean,zLogvar)
xPred = forward(decoderNet, zSampled);
xPred = dlarray(xPred, 'CT');
loss = elboLoss(XBatch, xPred, zMean, zLogvar);
[genGrad, infGrad] = dlgradient(loss, decoderNet.Learnables, ...
encoderNet1.Learnables);
end
function elbo = elboLoss(x,xPred,zMean,zLogvar)
reconstructionLoss = mse(x,xPred); % Reconstruction loss.
KL = -0.5 * sum(1 + zLogvar - zMean.^2 - exp(zLogvar),1); % KL divergence.
KL = mean(KL);
elbo = reconstructionLoss + KL; % Combined loss.
end

Respuesta aceptada

Richard
Richard el 18 de Nov. de 2022
Editada: Richard el 25 de Nov. de 2022
Zero gradients are normally caused by the computation between the inputs and the output loss not being traced. When dlgradient cannot see that the loss has a dependency on an input, it always assigns zero gradients for that input. Only computations that are inside the function that is passed to dlfeval are traced.
In this case, you have a chunk of code being run outside the dlfeval to compute zSampled, including the forwarding through the encoder. Try moving that code inside the modelGradients1 function.

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