NCA feature selection method in deep learning
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cvx=cvpartition(size(Features,1),'kfold',5);
numvalidsets = cvx.NumTestSets;
n = cvx.TrainSize(1);
lambdavals=(linspace(0,11,11))./n;
lossvals = zeros(length(lambdavals),numvalidsets);
for w = 1:length(lambdavals)
for p =1:numvalidsets
train=1;
test=1;
indextrain=training(cvx,p);
for i=1:size(Features,1)
if indextrain(i)==1
XTrain(train,:)=Features(i,:);
YTrain(train)=label(i);
train=train+1;
else
XTest(test,:)=Features(i,:);
YTest(test)=label(i);
test=test+1;
end
end
TrainData= XTrain,YTrain;
TestData =XTest,YTest;
nca = fscnca(XTrain,YTrain,'FitMethod','exact', ...
'Solver','sgd','Lambda',lambdavals(w), ...
'IterationLimit',5,'Standardize',true);
lossvals(w,p) = loss(nca,XTest,YTest,'LossFunction','classiferror');
end
end
%%
meanloss = mean(lossvals,2);
[~,idx] = min(meanloss)% Find the index
bestlambda = lambdavals(idx) % Find the best lambda value
bestloss = meanloss(idx)
nca = fscnca(XTrain,YTrain,'FitMethod','exact','Solver','sgd',...
'Lambda',bestlambda,'Standardize',true,'Verbose',1);
total = 0.05; %??????
selidx = find(nca.FeatureWeights > total*max(1,max(nca.FeatureWeights)))
Best_Features_train = XTrain(:,selidx);
i am using NCA feature selection method with five-fold cross validation to select the best features my question is how to choose the value of 'total' veriable?
and for lambdavals??
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