I am using SVM to classify images. Currently I have a feature of dimention of about 2500. I am using a non-linear SVM with RBF kernel. Is it ok to use a non-linear SVM in my case because of the high number of features? Are there any way to classify a high number of features? (other than AdaBoost)?
closed as not a real question by rene, Andrew, Sneaky, TryTryAgain, Peter Ritchie Aug 27 '12 at 21:17
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The number of features is not enough to say whether SVM will work or not, and how long will it take to do the training. Try and find out.
If it does not work, one option is to abandon the kernels and go for LIBLINEAR, which is specially designed to handle such problems.