Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

SVM can avoid overfitting with the right choice of parameters. How to know if the trained svm is overfitted? Is there a way to identify that?How to avoid that? Can testing with unseen data help?

share|improve this question
I am not sure if there is a canonical way to do that, but probably the easier way to do it is by comparing results between your testing dataset and your validation dataset. A huge difference between results might indicate a generalization problem. –  Pedrom Nov 27 '13 at 16:47

2 Answers 2

The libSVM metatraining does exactly that for you. If you have data unseen to the (meta)training you could do the prediction for this test data and compare its performance to the performance for the training data. A small gap is ok while a big gap is an indicator for overfitting or too little training data.

share|improve this answer

You may tun the C value gradually and observe the change of support vector number (as we know, too large C is more possible to cause the overfitting). Besides, small epsilon (say, reaches zero) also leads to overfitting. To experimentally verify, you may just do the cross validation to compare the prediction accuracy during training process.

share|improve this answer
I believed he was more interested in identifying overfitting. I would also add to your answer that high dimensional pattern are unlikely to produce overfitting, so adding more features could be an option too (Once you know that the model is overfitting) –  Pedrom Nov 27 '13 at 23:20

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.