Publication | Closed Access
On the Design of Black-Box Adversarial Examples by Leveraging Gradient-Free Optimization and Operator Splitting Method
58
Citations
38
References
2019
Year
Unknown Venue
Artificial IntelligenceEngineeringMachine LearningGradient-free OptimizationAi SafetyData ScienceBlack-box Adversarial ExamplesPattern RecognitionAdversarial Machine LearningOperator Splitting MethodGenerative ModelSupervised LearningMachine Learning ModelComputer EngineeringRobust Machine LearningComputer ScienceDeep LearningAttack ModelAdmm Solution Framework
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.
| Year | Citations | |
|---|---|---|
Page 1
Page 1