How to optimize the parameters using libsvm?
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Libsvm FAQ suggests this piece of code:
bestcv = 0;
for log2c = -1:3,
for log2g = -4:1,
cmd = ['-v 5 -c ', num2str(2^log2c), ' -g ', num2str(2^log2g)];
cv = svmtrain(heart_scale_label, heart_scale_inst, cmd);
if (cv >= bestcv),
bestcv = cv; bestc = 2^log2c; bestg = 2^log2g;
end
fprintf('%g %g %g (best c=%g, g=%g, rate=%g)\n', log2c, log2g, cv, bestc, bestg, bestcv);
end
end
Which works perfectly fine as long as crossvalidation is included. However, I need to do the crossvalidation manually, because I need to artificially create data for the undersampled class I only want to have in the training set. But if I remove the crossvalidation, then the result is a struct which cannot be compared in the if statement. Does anybody know how to manipulate the code to make it work or how to do it differently?
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