Boosting Barely Robust Learners: A New Perspective on Adversarial Robustness
–Neural Information Processing Systems
We present an oracle-efficient algorithm for boosting the adversarial robustness of barely robust learners. Barely robust learning algorithms learn predictors that are adversarially robust only on a small fraction \beta \ll 1 of the data distribution. Our proposed notion of barely robust learning requires robustness with respect to a larger'' perturbation set; which we show is necessary for strongly robust learning, and that weaker relaxations are not sufficient for strongly robust learning. Our results reveal a qualitative and quantitative equivalence between two seemingly unrelated problems: strongly robust learning and barely robust learning.
Neural Information Processing Systems
Oct-9-2024, 13:08:02 GMT
- Technology: