# Accuracy of LibSVM decreases

After getting my testlabel and trainlabel, i implemented SVM on libsvm and i got an accuracy of 97.4359%. ( c= 1 and g = 0.00375)

``````model = svmtrain(TrainLabel, TrainVec, '-c 1 -g 0.00375');
[predict_label, accuracy, dec_values] = svmpredict(TestLabel, TestVec, model);
``````

After i find the best c and g,

``````bestcv = 0;
for log2c = -1:3,
for log2g = -4:1,
cmd = ['-v 5 -c ', num2str(2^log2c), ' -g ', num2str(2^log2g)];
cv = svmtrain(TrainLabel,TrainVec, 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
``````

c = 8 and g = 0.125

I implement the model again:

`````` model = svmtrain(TrainLabel, TrainVec, '-c 8 -g 0.125');
[predict_label, accuracy, dec_values] = svmpredict(TestLabel, TestVec, model);
``````

I get an accuracy of 82.0513%

How is it possible for the accuracy to decrease? shouldn't it increase? Or am i making any mistake?

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I'm not familiar with LibSVM's Matlab API, but are you sure `cv = svmtrain(TrainLabel,TrainVec, cmd);` will give you the accuracy? – larsmans Jan 20 '12 at 17:20
this was what they gave in LIBSVM FAQ: csie.ntu.edu.tw/~cjlin/libsvm/faq.html under How could I use MATLAB interface for parameter selection? – lakesh Jan 20 '12 at 17:24

The accuracies that you were getting during parameter tuning are biased upwards because you were predicting the same data that you were training. This is often fine for parameter tuning.

However, if you wanted those accuracies to be accurate estimates of the true generalization error on your final test set, then you have to add an additional wrap of cross validation or other resampling scheme.

Here is a very clear paper that outlines the general issue (but in a similar context of feature selection): http://www.pnas.org/content/99/10/6562.abstract

EDIT:

I usually add cross validation like:

``````n     = 95 % total number of observations
nfold = 10 % desired number of folds

% Set up CV folds
inds = repmat(1:nfold, 1, mod(nfold, n))
inds = inds(randperm(n))

% Loop over folds
for i = 1:nfold
datapart = data(inds ~= i, :)

% do some stuff

% save results
end

% combine results
``````
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how do you add an additional wrap of cross validation? – lakesh Jan 21 '12 at 7:02
@lakesh See edit. Good luck! – John Colby Jan 22 '12 at 18:33
just to clarify : Doesn't LIBSVM do it? all u need to type is "-v n" where n is the number of fold. – lakesh Jan 22 '12 at 19:07
but i am trying to find the best C and gamma... – lakesh Jan 22 '12 at 19:08
Yea it could...I'm just not familiar with the MATLAB interface to libsvm. This code is how to do it more generally. Just make sure there are 2 layers of CV...so for each of these outer/external folds, there will be an entire separate set of tuning CV folds. If you're doing 10-fold CV, that means 10*10 = 100 folds total. – John Colby Jan 22 '12 at 19:15

To do cross validation, you are supposed to split your training data. Here you test on training data to find your best set of parameter. That is not a good measure. You should use the following pseudo code:

``````for param = set of parameter to test
[trainTrain,trainVal] = randomly split (trainSet); %%% you can repeat that several times and take the mean accuracy
model = svmtrain(trainTrain, param);
acc = svmpredict(trainVal, model);
if accuracy is the best
bestPAram = param
end
end
``````
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what is wrong with my code? it does iterate to find the best c and gamma... – lakesh Jan 20 '12 at 17:54
this was what they gave in LIBSVM FAQ: csie.ntu.edu.tw/~cjlin/libsvm/faq.html under How could I use MATLAB interface for parameter selection? – lakesh Jan 20 '12 at 17:56
I am already doing the cross validation thing in my code.. – lakesh Jan 22 '12 at 14:32