Abstract
Robust machine learning is currently one of the most prominent topics which could potentially help shaping a future of advanced AI platforms that not only perform well in average cases but also in worst cases or adverse situations. Despite the long-term vision, however, existing studies on black-box adversarial attacks are still restricted to very specific settings of threat models (e.g., single distortion metric and restrictive assumption on target model's feedback to queries) and/or suffer from prohibitively high query complexity. To push for further advances in this field, we introduce a general framework based on an operator splitting method, the alternating direction method of multipliers (ADMM) to devise efficient, robust black-box attacks that work with various distortion metrics and feedback settings without incurring high query complexity. Due to the black-box nature of the threat model, the proposed ADMM solution framework is integrated with zeroth-order (ZO) optimization and Bayesian optimization (BO), and thus is applicable to the gradient-free regime. This results in two new black-box adversarial attack generation methods, ZO-ADMM and BO-ADMM. Our empirical evaluations on image classification datasets show that our proposed approaches have much lower function query complexities compared to state-of-the-art attack methods, but achieve very competitive attack success rates.
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CITATION STYLE
Zhao, P., Liu, S., Chen, P. Y., Hoang, T. N., Xu, K., Kailkhura, B., & Lin, X. (2019). On the design of black-box adversarial examples by leveraging gradient-free optimization and operator splitting method. In Proceedings of the IEEE International Conference on Computer Vision (pp. 121–130). Institute of Electrical and Electronics Engineers Inc. https://doi.org/10.1109/ICCV.2019.00021
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