Model-Targeted Poisoning Attacks with Provable Convergence
Abstract
In a poisoning attack, an adversary with control over a small fraction of the training data attempts to select that data in a way that induces a corrupted model that misbehaves in favor of the adversary. We consider poisoning attacks against convex machine learning models and propose an efficient poisoning attack designed to induce a specified model. Unlike previous model-targeted poisoning attacks, our attack comes with provable convergence to {\it any} attainable target classifier. The distance from the induced classifier to the target classifier is inversely proportional to the square root of the number of poisoning points. We also provide a lower bound on the minimum number of poisoning points needed to achieve a given target classifier. Our method uses online convex optimization, so finds poisoning points incrementally. This provides more flexibility than previous attacks which require a priori assumption about the number of poisoning points. Our attack is the first model-targeted poisoning attack that provides provable convergence for convex models, and in our experiments, it either exceeds or matches state-of-the-art attacks in terms of attack success rate and distance to the target model.
Cite
@article{arxiv.2006.16469,
title = {Model-Targeted Poisoning Attacks with Provable Convergence},
author = {Fnu Suya and Saeed Mahloujifar and Anshuman Suri and David Evans and Yuan Tian},
journal= {arXiv preprint arXiv:2006.16469},
year = {2021}
}
Comments
32 pages, code available at: https://github.com/suyeecav/model-targeted-poisoning