NCA feature selection method in deep learning

조회 수: 9 (최근 30일)
Alaa Almazroey
Alaa Almazroey 2019년 9월 11일
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??

답변 (0개)

카테고리

Help CenterFile Exchange에서 Statistics and Machine Learning Toolbox에 대해 자세히 알아보기

Community Treasure Hunt

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

Start Hunting!

Translated by