@inproceedings{99d21ce4bc2d40abb726d75b228da028,
title = "Learning with non-positive kernels",
abstract = "In this paper we show that many kernel methods can be adapted to deal with indefinite kernels, that is, kernels which are not positive semidefinite. They do not satisfy Mercer's condition and they induce associated functional spaces called Reproducing Kernel Kreǐn Spaces (RKKS), a generalization of Reproducing Kernel Hubert Spaces (RKHS). Machine learning in RKKS shares many {"}nice{"} properties of learning in RKHS, such as orthogonality and projection. However, since the kernels are indefinite, we can no longer minimize the loss, instead we stabilize it. We show a general representer theorem for constrained stabilization and prove generalization bounds by computing the Rademacher averages of the kernel class. We list several examples of indefinite kernels and investigate regularization methods to solve spline interpolation. Some preliminary experiments with indefinite kernels for spline smoothing are reported for truncated spectral factorization, Landweber-Fridman iterations, and MR-II.",
keywords = "Ill-posed Problems, Indefinite Kernels, Non-convex Optimization, Rademacher Average, Representer Theorem, Reproducing Kernel Kreǐn Space",
author = "Ong, {Cheng Soon} and Xavier Mary and St{\'e}phane Canu and Smola, {Alexander J.}",
year = "2004",
language = "English",
isbn = "1581138385",
series = "Proceedings, Twenty-First International Conference on Machine Learning, ICML 2004",
pages = "639--646",
editor = "R. Greiner and D. Schuurmans",
booktitle = "Proceedings, Twenty-First International Conference on Machine Learning, ICML 2004",
note = "Proceedings, Twenty-First International Conference on Machine Learning, ICML 2004 ; Conference date: 04-07-2004 Through 08-07-2004",
}