English

Classifier-independent Lower-Bounds for Adversarial Robustness

Machine Learning 2020-11-13 v6 Computer Vision and Pattern Recognition Machine Learning Neural and Evolutionary Computing

Abstract

We theoretically analyse the limits of robustness to test-time adversarial and noisy examples in classification. Our work focuses on deriving bounds which uniformly apply to all classifiers (i.e all measurable functions from features to labels) for a given problem. Our contributions are two-fold. (1) We use optimal transport theory to derive variational formulae for the Bayes-optimal error a classifier can make on a given classification problem, subject to adversarial attacks. The optimal adversarial attack is then an optimal transport plan for a certain binary cost-function induced by the specific attack model, and can be computed via a simple algorithm based on maximal matching on bipartite graphs. (2) We derive explicit lower-bounds on the Bayes-optimal error in the case of the popular distance-based attacks. These bounds are universal in the sense that they depend on the geometry of the class-conditional distributions of the data, but not on a particular classifier. Our results are in sharp contrast with the existing literature, wherein adversarial vulnerability of classifiers is derived as a consequence of nonzero ordinary test error.

Keywords

Cite

@article{arxiv.2006.09989,
  title  = {Classifier-independent Lower-Bounds for Adversarial Robustness},
  author = {Elvis Dohmatob},
  journal= {arXiv preprint arXiv:2006.09989},
  year   = {2020}
}
R2 v1 2026-06-23T16:24:34.754Z