Authors
Bernhard Scholkopf,
Robert Williamson,
Alex Smola,
John Platt,
John Platt,
Publication date
2000
Publisher
MIT Press
Total citations
Description
Suppose you are given some dataset drawn from an underlying probability distribution P and you want to estimate a" simple" subset S of input space such that the probability that a test point drawn from P lies outside of S equals some a priori specified l/between 0 and 1. We propose a method to approach this problem by trying to estimate a function f which is positive on S and negative on the complement. The functional form of f is given by a kernel expansion in terms of a potentially small subset of the training data; it is regularized by controlling the length of the weight vector in an associated feature space. We provide a theoretical analysis of the statistical performance of our algorithm. The algorithm is a natural extension of the support vector algorithm to the case of unlabelled data.