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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


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Are you talking about the LinearSVM class in scikit-learn? – Dougal Mar 6 '13 at 21:48
No, in Orange for data mining. The link is in the post. – Sabba Mar 6 '13 at 21:53
Are you setting up the whole set of parameters in both cases? There is a chance that a default value for a specific parameter is making the difference. Did you try to normalize the data by your self in both cases? – Pedrom Mar 6 '13 at 22:21
No, I didn't try to normalize the data on my own. Is it normal that LinearSVM gives the same results with and without normalization? – Sabba Mar 6 '13 at 22:55
You'd expect different results depending on normalization. Can you post a minimal version of the actual calls you're making? – Dougal Mar 7 '13 at 6:49

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