CVAILGMar 24, 2023

Improved Adversarial Training Through Adaptive Instance-wise Loss Smoothing

arXiv:2303.14077v24 citationsh-index: 64Has Code
Originality Highly original
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This work addresses adversarial robustness in deep neural networks, an incremental improvement over existing adversarial training methods.

The paper tackles the problem of uneven adversarial vulnerability in adversarial training by proposing Instance-adaptive Smoothness Enhanced Adversarial Training (ISEAT), which adaptively smooths loss landscapes to enhance robustness for more vulnerable samples, achieving state-of-the-art robustness of 59.32% on CIFAR10 without extra data and 61.55% with extra data.

Deep neural networks can be easily fooled into making incorrect predictions through corruption of the input by adversarial perturbations: human-imperceptible artificial noise. So far adversarial training has been the most successful defense against such adversarial attacks. This work focuses on improving adversarial training to boost adversarial robustness. We first analyze, from an instance-wise perspective, how adversarial vulnerability evolves during adversarial training. We find that during training an overall reduction of adversarial loss is achieved by sacrificing a considerable proportion of training samples to be more vulnerable to adversarial attack, which results in an uneven distribution of adversarial vulnerability among data. Such "uneven vulnerability", is prevalent across several popular robust training methods and, more importantly, relates to overfitting in adversarial training. Motivated by this observation, we propose a new adversarial training method: Instance-adaptive Smoothness Enhanced Adversarial Training (ISEAT). It jointly smooths both input and weight loss landscapes in an adaptive, instance-specific, way to enhance robustness more for those samples with higher adversarial vulnerability. Extensive experiments demonstrate the superiority of our method over existing defense methods. Noticeably, our method, when combined with the latest data augmentation and semi-supervised learning techniques, achieves state-of-the-art robustness against $\ell_{\infty}$-norm constrained attacks on CIFAR10 of 59.32% for Wide ResNet34-10 without extra data, and 61.55% for Wide ResNet28-10 with extra data. Code is available at https://github.com/TreeLLi/Instance-adaptive-Smoothness-Enhanced-AT.

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