I'm using libsvm to classify data with a linear SVM, and I'd like to know the separating hyperplane it produces (i.e. the vector w and real b such that x is classified as a positive sample iff w.x+b>0). The tool svmweight returns the coefficients of w, but how do I work out b?
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The missing ingredient is that: b (in wx + b > 0) is model.rho 

