Exploiting edge features for transferable adversarial attacks in distributed machine learning

IF 7.6 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Giulio Rossolini , Fabio Brau , Alessandro Biondi , Battista Biggio , Giorgio Buttazzo
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引用次数: 0

Abstract

As machine learning models become increasingly deployed across the edge of internet of things environments, a partitioned deep learning paradigm in which models are split across multiple computational nodes introduces a new dimension of security risk. Unlike traditional inference setups, these distributed pipelines span the model computation across heterogeneous nodes and communication layers, thereby exposing a broader attack surface to potential adversaries. Building on these motivations, this work explores a previously overlooked vulnerability: even when both the edge and cloud components of the model are inaccessible (i.e., black-box), an adversary who intercepts the intermediate features transmitted between them can still pose a serious threat. We demonstrate that, under these mild and realistic assumptions, an attacker can craft highly transferable proxy models, making the entire deep learning system significantly more vulnerable to evasion attacks. In particular, the intercepted features can be effectively analyzed and leveraged to distill surrogate models capable of crafting highly transferable adversarial examples against the target model. To this end, we propose an exploitation strategy specifically designed for distributed settings, which involves reconstructing the original tensor shape from vectorized transmitted features using simple statistical analysis, and adapting surrogate architectures accordingly to enable effective feature distillation.
A comprehensive and systematic experimental evaluation has been conducted to demonstrate that surrogate models trained with the proposed strategy, i.e., leveraging intermediate features, tremendously improve the transferability of adversarial attacks. These findings underscore the urgent need to account for intermediate feature leakage in the design of secure distributed deep learning systems, particularly in edge scenarios, where constrained devices are more exposed to communication vulnerabilities and offer limited protection mechanisms.
利用边缘特征在分布式机器学习中进行可转移的对抗性攻击
随着机器学习模型越来越多地部署在物联网环境的边缘,一种分割的深度学习范式(模型在多个计算节点上分割)引入了一个新的安全风险维度。与传统的推理设置不同,这些分布式管道跨越异构节点和通信层的模型计算,从而向潜在的对手暴露更广泛的攻击面。在这些动机的基础上,这项工作探索了一个以前被忽视的漏洞:即使模型的边缘和云组件都是不可访问的(即黑盒),拦截它们之间传输的中间特征的对手仍然可以构成严重的威胁。我们证明,在这些温和而现实的假设下,攻击者可以制作高度可转移的代理模型,使整个深度学习系统更容易受到逃避攻击。特别是,可以有效地分析和利用截获的特征来提取代理模型,这些模型能够针对目标模型制作高度可转移的对抗性示例。为此,我们提出了一种专门为分布式设置设计的开发策略,该策略包括使用简单的统计分析从矢量化的传输特征中重建原始张量形状,并相应地调整代理架构以实现有效的特征蒸馏。已经进行了全面和系统的实验评估,以证明用所提出的策略训练的代理模型,即利用中间特征,极大地提高了对抗性攻击的可转移性。这些发现强调了迫切需要考虑安全分布式深度学习系统设计中的中间特征泄漏,特别是在边缘场景中,受约束的设备更容易暴露于通信漏洞并且提供有限的保护机制。
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来源期刊
Internet of Things
Internet of Things Multiple-
CiteScore
3.60
自引率
5.10%
发文量
115
审稿时长
37 days
期刊介绍: Internet of Things; Engineering Cyber Physical Human Systems is a comprehensive journal encouraging cross collaboration between researchers, engineers and practitioners in the field of IoT & Cyber Physical Human Systems. The journal offers a unique platform to exchange scientific information on the entire breadth of technology, science, and societal applications of the IoT. The journal will place a high priority on timely publication, and provide a home for high quality. Furthermore, IOT is interested in publishing topical Special Issues on any aspect of IOT.
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