CVMar 15, 2024

Revisiting Adversarial Training under Long-Tailed Distributions

arXiv:2403.10073v126 citationsh-index: 15Has CodeCVPR
Originality Incremental advance
AI Analysis

This addresses adversarial robustness for real-world imbalanced data, offering an incremental improvement over existing techniques.

The paper tackles adversarial training on long-tailed datasets, finding that Balanced Softmax Loss alone matches prior methods with less overhead, and data augmentation significantly improves robustness by increasing example diversity, achieving a +6.66% boost in robustness on CIFAR-10-LT.

Deep neural networks are vulnerable to adversarial attacks, often leading to erroneous outputs. Adversarial training has been recognized as one of the most effective methods to counter such attacks. However, existing adversarial training techniques have predominantly been tested on balanced datasets, whereas real-world data often exhibit a long-tailed distribution, casting doubt on the efficacy of these methods in practical scenarios. In this paper, we delve into adversarial training under long-tailed distributions. Through an analysis of the previous work "RoBal", we discover that utilizing Balanced Softmax Loss alone can achieve performance comparable to the complete RoBal approach while significantly reducing training overheads. Additionally, we reveal that, similar to uniform distributions, adversarial training under long-tailed distributions also suffers from robust overfitting. To address this, we explore data augmentation as a solution and unexpectedly discover that, unlike results obtained with balanced data, data augmentation not only effectively alleviates robust overfitting but also significantly improves robustness. We further investigate the reasons behind the improvement of robustness through data augmentation and identify that it is attributable to the increased diversity of examples. Extensive experiments further corroborate that data augmentation alone can significantly improve robustness. Finally, building on these findings, we demonstrate that compared to RoBal, the combination of BSL and data augmentation leads to a +6.66% improvement in model robustness under AutoAttack on CIFAR-10-LT. Our code is available at https://github.com/NISPLab/AT-BSL .

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