I plan on using scikit svm for class prediction. I have a two-class dataset consisting of about 100 experiments. Each experiment encapsulates my data-points (vectors) + classification. Training of an SVM according to http://scikit-learn.org/stable/modules/svm.html should straight forward. I will have to put all vectors in an array and generate another array with the corresponding class labels, train SVM. However, in order to run leave-one-out error estimation, I need to leave out a specific subset of vectors - one experiment. How do I achieve that with the available score function?