A Bayes consistent 1-NN classifier
Machine Learning
2018-08-20 v4 Machine Learning
Abstract
We show that a simple modification of the 1-nearest neighbor classifier yields a strongly Bayes consistent learner. Prior to this work, the only strongly Bayes consistent proximity-based method was the k-nearest neighbor classifier, for k growing appropriately with sample size. We will argue that a margin-regularized 1-NN enjoys considerable statistical and algorithmic advantages over the k-NN classifier. These include user-friendly finite-sample error bounds, as well as time- and memory-efficient learning and test-point evaluation algorithms with a principled speed-accuracy tradeoff. Encouraging empirical results are reported.
Cite
@article{arxiv.1407.0208,
title = {A Bayes consistent 1-NN classifier},
author = {Aryeh Kontorovich and Roi Weiss},
journal= {arXiv preprint arXiv:1407.0208},
year = {2018}
}