# Calculate constant b in primal form SVM using scikit

In the case of a binary classification for Support Vector Machines, each new point x' is classi ed by evaluating,

``````y' = sign(w . x' + b)
``````

This is the case for the primal problem.

I wanted to find out the classifier equation, for which I need to find the "w" vector and the constant "b". I'm implementing it in Python using the scikit-learn package.

In scikit-learn package w vector can be found by the attribute "coef_", but how do I find the value of the constant b?

``````from sklearn import svm
cll = svm.SVC(kernel='linear')
cll.fit(X, Y) #X is the instances and Y is the output variable
w = cll.coef_[0]
``````

How do I find b?

Note: "intercept_" attribute contains holds the independent term -P from the dual form, and not from the primal form.

-

There is no "independent term" in dual form (dual optimization formulation is unbiased). This is the `b` from `y' = sign(w . x' + b)`, which is equivalent to `y' = sign( SUM_i alpha_i K(sv_i, x) + b )`