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How can find what the vector w is, i.e. the perpendicular to the separation plane?

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and please give solution, how to find vector w in JAVA? –  Somnath Kadam Apr 13 '13 at 18:07

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up vote 13 down vote accepted

This is how I did it here. If I remember correctly, this is based on how the dual form of the SVM optimisation works out.

model = svmtrain(...);
w = (model.sv_coef' * full(model.SVs));

And the bias is (and I don't really remember why its negative):

bias = -model.rho;

Then to do the classification (for a linear SVM), for a N-by-M dataset 'features' with N instances and M features,

predictions = sign(features * w' + bias);

If the kernel is not linear, then this won't give you the right answer.

For more information see How could I generate the primal variable w of linear SVM? , from the manual of libsvm.

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And how exactly do I use these to do manual classification? I am talking about the 2-classes case. –  Trup Apr 13 '12 at 14:33
    
I've edited my question to explain, though there isn't really any point in doing it... it will return exactly the same result as probs in [guess, acc, probs] = svmpredict(...);. –  Richante Apr 13 '12 at 15:47
    
Nope, it didn't really return the same result, it only returns -1s. I know it has no point, but I would like to make sure it is correct, and then I will simply use the weights in a separate application to 'manually' do classification without explicitly performing any SVM stuff. Thanks a lot, this is really a bottleneck in my project. Can you please double check this and see where the bug is? –  Trup Apr 13 '12 at 15:50
    
it worked for me. Is your model trained properly? do w and bias look like sensible values before you do the classification with them? What options are you passing to svmtrain? –  Richante Apr 13 '12 at 15:54
    
Here is what I do model = svmtrain(yTrain, xTrain, '-b 1'); [predicted_label, accuracy, z] = svmpredict(yTest, xTest, model, '-b 1');w = (model.sv_coef' * full(model.SVs));bias = -model.rho;manPredictions = sign(xTest * w' - bias); Thanks a lot for trying to help out Richard, I really appreciate it. P.S. Somebody please format the code. –  Trup Apr 13 '12 at 15:59

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