探索车辆网络中的图神经后门:基础、方法、应用和未来展望

IF 5.3 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Xiao Yang;Gaolei Li;Kai Zhou;Jianhua Li;Xingqin Lin;Yuchen Liu
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引用次数: 0

摘要

图神经网络(gnn)的进步极大地增强了车辆网络(VNs)在主要领域的应用,包括交通预测和管理、路线优化和算法规划以及协同驾驶。尽管GNN对VNs有很大的推动作用,但最近的研究已经从经验上证明了它对后门攻击的潜在脆弱性,在后门攻击中,攻击者将触发器集成到输入中,以操纵GNN来生成对手预谋的恶意输出(例如,对车辆动作或交通信号的错误分类)。这种易感性可归因于针对基于gnn的VN系统训练过程的对抗性操纵攻击。尽管对GNN后门的研究迅速增加,但在这一领域内仍然缺乏系统的调查。为了弥补这一差距,我们提出了第一个专门针对GNN后门的调查。本文首先概述了GNN的基本定义,然后根据GNN的技术特点和应用场景,对当前GNN后门及对策进行了详细的总结和分类。随后,对GNN后门的应用范式进行了分析,并提出了未来的研究趋势。与之前对以视觉为中心的后门的调查不同,我们独特地研究了VNs中面向gnn的后门攻击,旨在探索跨时空车辆图的攻击面,并为安全研究提供见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Graph Neural Backdoors in Vehicular Networks: Fundamentals, Methodologies, Applications, and Future Perspectives
Advances in Graph Neural Networks (GNNs) have substantially enhanced Vehicular Networks (VNs) across primary domains, encompassing traffic forecasting and management, route optimization and algorithmic planning, and cooperative driving. Despite the boosts of the GNN for VNs, recent research has empirically demonstrated its potential vulnerability to backdoor attacks, wherein adversaries integrate triggers into inputs to manipulate GNNs to generate adversary-premeditated malicious outputs (e.g., misclassification of vehicle actions or traffic signals). This susceptibility is attributable to adversarial manipulation attacks targeting the training process of GNN-based VN systems. Although there is a rapid increase in research on GNN backdoors, systematic surveys within this domain remain lacking. To bridge this gap, we present the first survey dedicated to GNN backdoors. We start with outlining the fundamental definition of GNNs, followed by the detailed summarization and categorization of current GNN backdoors and countermeasures based on their technical features and application scenarios. Subsequently, an analysis of the applicability paradigms of GNN backdoors is conducted, and prospective research trends are presented. Unlike prior surveys on vision-centric backdoors, we uniquely investigate GNN-oriented backdoor attacks in VNs, which aims to explore attack surfaces across spatiotemporal vehicular graphs and provide insights to security research.
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来源期刊
CiteScore
9.60
自引率
0.00%
发文量
25
审稿时长
10 weeks
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