Learning Sets with Separating Kernels
Machine Learning
2014-11-26 v2
Abstract
We consider the problem of learning a set from random samples. We show how relevant geometric and topological properties of a set can be studied analytically using concepts from the theory of reproducing kernel Hilbert spaces. A new kind of reproducing kernel, that we call separating kernel, plays a crucial role in our study and is analyzed in detail. We prove a new analytic characterization of the support of a distribution, that naturally leads to a family of provably consistent regularized learning algorithms and we discuss the stability of these methods with respect to random sampling. Numerical experiments show that the approach is competitive, and often better, than other state of the art techniques.
Cite
@article{arxiv.1204.3573,
title = {Learning Sets with Separating Kernels},
author = {Ernesto De Vito and Lorenzo Rosasco and Alessandro Toigo},
journal= {arXiv preprint arXiv:1204.3573},
year = {2014}
}
Comments
final version