Maximum Margin Multiclass Nearest Neighbors
Abstract
We develop a general framework for margin-based multicategory classification in metric spaces. The basic work-horse is a margin-regularized version of the nearest-neighbor classifier. We prove generalization bounds that match the state of the art in sample size and significantly improve the dependence on the number of classes . Our point of departure is a nearly Bayes-optimal finite-sample risk bound independent of . Although -free, this bound is unregularized and non-adaptive, which motivates our main result: Rademacher and scale-sensitive margin bounds with a logarithmic dependence on . As the best previous risk estimates in this setting were of order , our bound is exponentially sharper. From the algorithmic standpoint, in doubling metric spaces our classifier may be trained on examples in time and evaluated on new points in time.
Cite
@article{arxiv.1401.7898,
title = {Maximum Margin Multiclass Nearest Neighbors},
author = {Aryeh Kontorovich and Roi Weiss},
journal= {arXiv preprint arXiv:1401.7898},
year = {2014}
}