I am trying to get a prediction column matrix in MATLAB but I don't quite know how to go about coding it. My current code is -
load DataWorkspace.mat groups = ismember(Num,'Yes'); k=10; %# number of cross-validation folds: %# If you have 50 samples, divide them into 10 groups of 5 samples each, %# then train with 9 groups (45 samples) and test with 1 group (5 samples). %# This is repeated ten times, with each group used exactly once as a test set. %# Finally the 10 results from the folds are averaged to produce a single %# performance estimation. cvFolds = crossvalind('Kfold', groups, k); cp = classperf(groups); for i = 1:k testIdx = (cvFolds == i); trainIdx = ~testIdx; svmModel = svmtrain(Data(trainIdx,:), groups(trainIdx), ... 'Autoscale',true, 'Showplot',false, 'Method','SMO', ... 'Kernel_Function','rbf'); pred = svmclassify(svmModel, Data(testIdx,:), 'Showplot',false); %# evaluate and update performance object cp = classperf(cp, pred, testIdx); end cp.CorrectRate cp.CountingMatrix
The issue is that it's actually calculating the accuracy 11 times in total - 10 times for each fold and one final time as an average. But if I take the individual predictions of each fold and print pred for each loop, the accuracy understandable reduces greatly.
However, I need a column matrix of the predicted values for each row of the data. Any ideas on how I can go about modifying the code?