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Deep Adversarial Defense Against Multilevel-Lp Attacks

12 July 2024
Ren Wang
Yuxuan Li
Alfred Hero
    AAML
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Abstract

Deep learning models have shown considerable vulnerability to adversarial attacks, particularly as attacker strategies become more sophisticated. While traditional adversarial training (AT) techniques offer some resilience, they often focus on defending against a single type of attack, e.g., the ℓ∞\ell_\inftyℓ∞​-norm attack, which can fail for other types. This paper introduces a computationally efficient multilevel ℓp\ell_pℓp​ defense, called the Efficient Robust Mode Connectivity (EMRC) method, which aims to enhance a deep learning model's resilience against multiple ℓp\ell_pℓp​-norm attacks. Similar to analytical continuation approaches used in continuous optimization, the method blends two ppp-specific adversarially optimal models, the ℓ1\ell_1ℓ1​- and ℓ∞\ell_\inftyℓ∞​-norm AT solutions, to provide good adversarial robustness for a range of ppp. We present experiments demonstrating that our approach performs better on various attacks as compared to AT-ℓ∞\ell_\inftyℓ∞​, E-AT, and MSD, for datasets/architectures including: CIFAR-10, CIFAR-100 / PreResNet110, WideResNet, ViT-Base.

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