Learning without Concentration
Machine Learning
2014-10-23 v2 Machine Learning
Abstract
We obtain sharp bounds on the performance of Empirical Risk Minimization performed in a convex class and with respect to the squared loss, without assuming that class members and the target are bounded functions or have rapidly decaying tails. Rather than resorting to a concentration-based argument, the method used here relies on a `small-ball' assumption and thus holds for classes consisting of heavy-tailed functions and for heavy-tailed targets. The resulting estimates scale correctly with the `noise level' of the problem, and when applied to the classical, bounded scenario, always improve the known bounds.
Cite
@article{arxiv.1401.0304,
title = {Learning without Concentration},
author = {Shahar Mendelson},
journal= {arXiv preprint arXiv:1401.0304},
year = {2014}
}