When are Non-Parametric Methods Robust?
Abstract
A growing body of research has shown that many classifiers are susceptible to {\em{adversarial examples}} -- small strategic modifications to test inputs that lead to misclassification. In this work, we study general non-parametric methods, with a view towards understanding when they are robust to these modifications. We establish general conditions under which non-parametric methods are r-consistent -- in the sense that they converge to optimally robust and accurate classifiers in the large sample limit. Concretely, our results show that when data is well-separated, nearest neighbors and kernel classifiers are r-consistent, while histograms are not. For general data distributions, we prove that preprocessing by Adversarial Pruning (Yang et. al., 2019) -- that makes data well-separated -- followed by nearest neighbors or kernel classifiers also leads to r-consistency.
Cite
@article{arxiv.2003.06121,
title = {When are Non-Parametric Methods Robust?},
author = {Robi Bhattacharjee and Kamalika Chaudhuri},
journal= {arXiv preprint arXiv:2003.06121},
year = {2021}
}
Comments
accepted to ICML 2020