Learning the kernel function via regularization (2005)
| Venue: | Journal of Machine Learning Research |
| Citations: | 57 - 4 self |
BibTeX
@ARTICLE{Micchelli05learningthe,
author = {Charles A. Micchelli and Massimiliano Pontil},
title = {Learning the kernel function via regularization},
journal = {Journal of Machine Learning Research},
year = {2005},
volume = {6},
pages = {1099--1125}
}
Years of Citing Articles
OpenURL
Abstract
We study the problem of finding an optimal kernel from a prescribed convex set of kernels K for learning a real-valued function by regularization. We establish for a wide variety of regularization functionals that this leads to a convex optimization problem and, for square loss regularization, we characterize the solution of this problem. We show that, although K may be an uncountable set, the optimal kernel is always obtained as a convex combination of at most m+2 basic kernels, where m is the number of data examples. In particular, our results apply to learning the optimal radial kernel or the optimal dot product kernel. 1.







