A Characterization of Semi-Supervised Adversarially-Robust PAC Learnability
Abstract
We study the problem of learning an adversarially robust predictor to test time attacks in the semi-supervised PAC model. We address the question of how many labeled and unlabeled examples are required to ensure learning. We show that having enough unlabeled data (the size of a labeled sample that a fully-supervised method would require), the labeled sample complexity can be arbitrarily smaller compared to previous works, and is sharply characterized by a different complexity measure. We prove nearly matching upper and lower bounds on this sample complexity. This shows that there is a significant benefit in semi-supervised robust learning even in the worst-case distribution-free model, and establishes a gap between the supervised and semi-supervised label complexities which is known not to hold in standard non-robust PAC learning.
Cite
@article{arxiv.2202.05420,
title = {A Characterization of Semi-Supervised Adversarially-Robust PAC Learnability},
author = {Idan Attias and Steve Hanneke and Yishay Mansour},
journal= {arXiv preprint arXiv:2202.05420},
year = {2024}
}
Comments
NeurIPS 2022 camera-ready