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A Closer Look at the Adversarial Robustness of Information Bottleneck Models

2021-07-12ICML Workshop AML 2021Unverified0· sign in to hype

Iryna Korshunova, David Stutz, Alexander A. Alemi, Olivia Wiles, Sven Gowal

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Abstract

We study the adversarial robustness of information bottleneck models for classification. Previous works showed that the robustness of models trained with information bottlenecks can improve upon adversarial training. Our evaluation under a diverse range of white-box l_ attacks suggests that information bottlenecks alone are not a strong defense strategy, and that previous results were likely influenced by gradient obfuscation.

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