I have a scikits-learn linear svm.SVC classifier designed to classify text into 2 classes (-1,1). The classifier uses 250 features from the training set to make its predictions, and it works fairly well.

However, I can't figure out how plot the hyperplane or the support vectors in matplotlib. All the examples online use only 2 features to derive the decision boundary and the support vector points. I can't seem to find any that plot hyperplanes or support vectors that have more than 2 features or lack fixed features. I know that there is a fundamental mathematical step that I am missing here, and any help would be appreciated.