I'm running into problems using Liblinear support vector machine library.
I tried to bring the problem down to contain the least data as possible.
So I wrote this feature extraction tool, it generates an svm package for testing, and for training.
When I setup the lab using just 1 feature vector as train data, and predict with the same vector. It's 100% right. In my opinion this should.
But when I'm adding more files to the trainingset, the prediction is totally out of hand. It doesn't even know what it's doing anymore.
So I have 2 files as a trainingset. And train the svm.
Now I choose one of those files, and try to predict the outcome. It fails...
Now I'm very new to this, so I'm asking for a hint of where to find the error. Am I using wrong SVM settings or is my feature calculation the problem?
I know my featurevector isn't 100% right right now, when I try to scale down the vector to like 1 value and moving up. Is this a good way to start isolating errors?
How to isolate the problem? And does anybody know some good literature on feature selection and svm?