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Common Knowledge Learning for Generating Transferable Adversarial Examples

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arxiv 2307.00274 v1 pith:BDSBTBP2 submitted 2023-07-01 cs.LG cs.CV

Common Knowledge Learning for Generating Transferable Adversarial Examples

classification cs.LG cs.CV
keywords adversarialexamplestransferabilityarchitecturesbetterknowledgemodelsnetwork
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper focuses on an important type of black-box attacks, i.e., transfer-based adversarial attacks, where the adversary generates adversarial examples by a substitute (source) model and utilize them to attack an unseen target model, without knowing its information. Existing methods tend to give unsatisfactory adversarial transferability when the source and target models are from different types of DNN architectures (e.g. ResNet-18 and Swin Transformer). In this paper, we observe that the above phenomenon is induced by the output inconsistency problem. To alleviate this problem while effectively utilizing the existing DNN models, we propose a common knowledge learning (CKL) framework to learn better network weights to generate adversarial examples with better transferability, under fixed network architectures. Specifically, to reduce the model-specific features and obtain better output distributions, we construct a multi-teacher framework, where the knowledge is distilled from different teacher architectures into one student network. By considering that the gradient of input is usually utilized to generated adversarial examples, we impose constraints on the gradients between the student and teacher models, to further alleviate the output inconsistency problem and enhance the adversarial transferability. Extensive experiments demonstrate that our proposed work can significantly improve the adversarial transferability.

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