The trade-off between robustness and accuracy has been widely studied in the adversarial literature. Although still controversial, the prevailing view is that this trade-off is inherent, either empirically or theoretically. Thus, we dig for the origin of this trade-off in adversarial training and find that it may stem from the improperly defined robust error, which imposes an inductive bias of local invariance -- an overcorrection towards smoothness. Given this, we advocate employing local equivariance to describe the ideal behavior of a robust model, leading to a self-consistent robust error named SCORE. By definition, SCORE facilitates the reconciliation between robustness and accuracy, while still handling the worst-case uncertainty via robust optimization. By simply substituting KL divergence with variants of distance metrics, SCORE can be efficiently minimized. Empirically, our models achieve top-rank performance on RobustBench under AutoAttack. Besides, SCORE provides instructive insights for explaining the overfitting phenomenon and semantic input gradients observed on robust models. Code is available at https://github.com/P2333/SCORE.
Robustness and Accuracy Could Be Reconcilable by (Proper) Definition
A new robust error metric called SCORE is introduced to reconcile robustness and accuracy in adversarial training by promoting local equivariance and efficiently minimizing distance metric variants.
- Year
- 2022
- Venue
- arXiv 2022
- Authors
- 5
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2202.10103v2ARXIV-DEFAULT
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