| Literature DB >> 11440593 |
B Schölkopf1, J C Platt, J Shawe-Taylor, A J Smola, R C Williamson.
Abstract
Suppose you are given some data set 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 value between 0 and 1. We propose a method to approach this problem by trying to estimate a function f that 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. The expansion coefficients are found by solving a quadratic programming problem, which we do by carrying out sequential optimization over pairs of input patterns. We also 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 unlabeled data.Year: 2001 PMID: 11440593 DOI: 10.1162/089976601750264965
Source DB: PubMed Journal: Neural Comput ISSN: 0899-7667 Impact factor: 2.026