Neural network clasifing everything into one class (streamlined the problem)
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Hi my NN clasifies everything into one class, it does not seem to be learning at all, could you hint me where the problem could be please? I tried everything...No matter the architecture of the neural network it does the same thing, so I think I must use it wrong in some way....If I use patternet the clasification works...
load('workspace2.mat')
%%
lgraph = layerGraph();
tempLayers = [
featureInputLayer(29,"Name","featureinput")
fullyConnectedLayer(32,"Name","fc_1")
fullyConnectedLayer(64,"Name","fc_5")
fullyConnectedLayer(128,"Name","fc_2")
fullyConnectedLayer(2,"Name","fc_3")
classificationLayer("Name","classoutput")];
lgraph = addLayers(lgraph,tempLayers);
plot(lgraph)
analyzeNetwork(lgraph)
%%
categor = categorical(I) ;
X1TrainM = data1;
TTrainM = categor;
dsX1TrainM = arrayDatastore(X1TrainM,IterationDimension=2);
dsTTrainM = arrayDatastore(TTrainM,IterationDimension=2);
options = trainingOptions("sgdm", ...
MaxEpochs=15, ...
InitialLearnRate=0.0000001, ...
Plots="training-progress", ...
Shuffle="every-epoch",...
Verbose=1);
dsTrain = combine(dsX1TrainM,dsTTrainM);
net = trainNetwork(dsTrain,lgraph,options);
YPredicted = classify(net,dsTrain);
plotconfusion(categor',YPredicted)
%This works
t = zeros(2,length(I));
for ind = 1:1:length(I)
t(I(ind),ind) = 1;
end
x = data1;
net = patternnet([64,128,256]);
net.trainParam.max_fail = 20;
net = train(net,x,t);
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