I used LinearSVM - which is a wrapper around LIBLINEAR - and noticed big differences between the results of the wrapper and the pure implementation? The difference is up to 10% higher for LinearSVM.
I'm kind of confused about the reason. I tried LIBLINEAR with the same parameters set in the documentation of LinearSVM but I still get this big difference.
The LinearSVM doesn't mention how the normalization is done. Is normalization one reason for this performance difference?
Finally, if I end up using LinearSVM from Orange, is there a way to save the trained model to use it for future on new data?
Link for LinearSVM from Orange http://orange.biolab.si/docs/latest/reference/rst/Orange.classification.svm/
Link for LIBLINEAR http://www.csie.ntu.edu.tw/~cjlin/liblinear/