LGAICVMLJul 1, 2020

Adversarial Example Games

arXiv:2007.00720v657 citations
AI Analysis

This work addresses the need for principled, transferable adversarial attacks to improve security in machine learning, offering a foundational approach for developing safeguards against such threats.

The paper tackles the problem of generating adversarial examples in non-interactive blackbox settings by introducing Adversarial Example Games (AEG), a min-max game framework that provides theoretical guarantees and achieves state-of-the-art performance with average relative improvements of 29.9% and 47.2% on MNIST and CIFAR-10 datasets.

The existence of adversarial examples capable of fooling trained neural network classifiers calls for a much better understanding of possible attacks to guide the development of safeguards against them. This includes attack methods in the challenging non-interactive blackbox setting, where adversarial attacks are generated without any access, including queries, to the target model. Prior attacks in this setting have relied mainly on algorithmic innovations derived from empirical observations (e.g., that momentum helps), lacking principled transferability guarantees. In this work, we provide a theoretical foundation for crafting transferable adversarial examples to entire hypothesis classes. We introduce Adversarial Example Games (AEG), a framework that models the crafting of adversarial examples as a min-max game between a generator of attacks and a classifier. AEG provides a new way to design adversarial examples by adversarially training a generator and a classifier from a given hypothesis class (e.g., architecture). We prove that this game has an equilibrium, and that the optimal generator is able to craft adversarial examples that can attack any classifier from the corresponding hypothesis class. We demonstrate the efficacy of AEG on the MNIST and CIFAR-10 datasets, outperforming prior state-of-the-art approaches with an average relative improvement of $29.9\%$ and $47.2\%$ against undefended and robust models (Table 2 & 3) respectively.

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