Towards Efficient Data Free Blackbox Adversarial Attack

J Zhang, Bo Li, Jianghe Xu, Shuang Wu, Shouhong Ding, Lei Zhang, Chao Wu
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引用次数: 35

Abstract

Classic black-box adversarial attacks can take advantage of transferable adversarial examples generated by a similar substitute model to successfully fool the target model. However, these substitute models need to be trained by target models' training data, which is hard to acquire due to privacy or transmission reasons. Recognizing the limited availability of real data for adversarial queries, recent works proposed to train substitute models in a data-free black-box scenario. However, their generative adversarial networks (GANs) based framework suffers from the convergence failure and the model collapse, resulting in low efficiency. In this paper, by rethinking the collaborative relationship between the generator and the substitute model, we design a novel black-box attack framework. The proposed method can efficiently imitate the target model through a small number of queries and achieve high attack success rate. The comprehensive experiments over six datasets demonstrate the effectiveness of our method against the state-of-the-art attacks. Especially, we conduct both label-only and probability-only attacks on the Microsoft Azure online model, and achieve a 100% attack success rate with only 0.46% query budget of the SOTA method [49].
迈向有效的无数据黑箱对抗攻击
经典的黑盒对抗攻击可以利用由类似替代模型生成的可转移的对抗示例来成功地欺骗目标模型。然而,这些替代模型需要通过目标模型的训练数据进行训练,由于隐私或传输等原因,这些训练数据很难获得。认识到对抗性查询的真实数据的有限可用性,最近的工作提出在无数据的黑箱场景中训练替代模型。然而,基于生成对抗网络(GANs)的框架存在收敛失败和模型崩溃的问题,导致效率低下。本文通过重新思考生成模型与替代模型之间的协作关系,设计了一种新的黑盒攻击框架。该方法可以通过少量的查询,有效地模拟目标模型,达到较高的攻击成功率。在六个数据集上的综合实验证明了我们的方法对最先进的攻击的有效性。特别是,我们对Microsoft Azure在线模型进行了纯标签攻击和纯概率攻击,并且SOTA方法的查询预算仅为0.46%,攻击成功率为100%[49]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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