Generative Poisoning Using Random Discriminators
Abstract
We introduce ShortcutGen, a new data poisoning attack that generates sample-dependent, error-minimizing perturbations by learning a generator. The key novelty of ShortcutGen is the use of a randomly-initialized discriminator, which provides spurious shortcuts needed for generating poisons. Different from recent, iterative methods, our ShortcutGen can generate perturbations with only one forward pass in a label-free manner, and compared to the only existing generative method, DeepConfuse, our ShortcutGen is faster and simpler to train while remaining competitive. We also demonstrate that integrating a simple augmentation strategy can further boost the robustness of ShortcutGen against early stopping, and combining augmentation and non-augmentation leads to new state-of-the-art results in terms of final validation accuracy, especially in the challenging, transfer scenario. Lastly, we speculate, through uncovering its working mechanism, that learning a more general representation space could allow ShortcutGen to work for unseen data.
Cite
@article{arxiv.2211.01086,
title = {Generative Poisoning Using Random Discriminators},
author = {Dirren van Vlijmen and Alex Kolmus and Zhuoran Liu and Zhengyu Zhao and Martha Larson},
journal= {arXiv preprint arXiv:2211.01086},
year = {2022}
}
Comments
6 pages, 2 figures, 4 tables, accepted as an oral presentation at RCV (ECCV 2022 Workshop)