Witches' Brew: Industrial Scale Data Poisoning via Gradient Matching
This work highlights a credible threat to model integrity for real-world practitioners in large-scale deep learning systems, showing that existing defenses are insufficient against such attacks.
The paper tackles the problem of targeted data poisoning attacks on deep neural networks by introducing a gradient-matching method that successfully causes misclassification of test images, achieving the first successful attack on a full-sized, poisoned ImageNet dataset with only a small fraction of training data perturbed.
Data Poisoning attacks modify training data to maliciously control a model trained on such data. In this work, we focus on targeted poisoning attacks which cause a reclassification of an unmodified test image and as such breach model integrity. We consider a particularly malicious poisoning attack that is both "from scratch" and "clean label", meaning we analyze an attack that successfully works against new, randomly initialized models, and is nearly imperceptible to humans, all while perturbing only a small fraction of the training data. Previous poisoning attacks against deep neural networks in this setting have been limited in scope and success, working only in simplified settings or being prohibitively expensive for large datasets. The central mechanism of the new attack is matching the gradient direction of malicious examples. We analyze why this works, supplement with practical considerations. and show its threat to real-world practitioners, finding that it is the first poisoning method to cause targeted misclassification in modern deep networks trained from scratch on a full-sized, poisoned ImageNet dataset. Finally we demonstrate the limitations of existing defensive strategies against such an attack, concluding that data poisoning is a credible threat, even for large-scale deep learning systems.