English

Label-Consistent Backdoor Attacks

Machine Learning 2019-12-10 v2 Cryptography and Security Machine Learning

Abstract

Deep neural networks have been demonstrated to be vulnerable to backdoor attacks. Specifically, by injecting a small number of maliciously constructed inputs into the training set, an adversary is able to plant a backdoor into the trained model. This backdoor can then be activated during inference by a backdoor trigger to fully control the model's behavior. While such attacks are very effective, they crucially rely on the adversary injecting arbitrary inputs that are---often blatantly---mislabeled. Such samples would raise suspicion upon human inspection, potentially revealing the attack. Thus, for backdoor attacks to remain undetected, it is crucial that they maintain label-consistency---the condition that injected inputs are consistent with their labels. In this work, we leverage adversarial perturbations and generative models to execute efficient, yet label-consistent, backdoor attacks. Our approach is based on injecting inputs that appear plausible, yet are hard to classify, hence causing the model to rely on the (easier-to-learn) backdoor trigger.

Keywords

Cite

@article{arxiv.1912.02771,
  title  = {Label-Consistent Backdoor Attacks},
  author = {Alexander Turner and Dimitris Tsipras and Aleksander Madry},
  journal= {arXiv preprint arXiv:1912.02771},
  year   = {2019}
}