DV-FSR:联合序列推荐的双视角目标攻击框架

Qitao Qin, Yucong Luo, Mingyue Cheng, Qingyang Mao, Chenyi Lei
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引用次数: 0

摘要

联合推荐(FedRec)通过对个性化模型进行分散训练来保护用户隐私,但这种架构本身容易受到恶意攻击。出于商业和社会影响方面的考虑,针对 FedRec 系统的定向攻击开展了大量研究。然而,这些研究在很大程度上忽略了推荐模型的不同鲁棒性。此外,我们的实证研究结果表明,现有的定向攻击方法在联邦顺序推荐(FSR)任务中的效果有限。在这些观察结果的推动下,我们专注于研究 FSR 中的定向攻击,并提出了一种新颖的双视角攻击框架,命名为 DV-FSR。这种攻击方法独特地结合了基于采样的显式策略和基于对比学习的隐式梯度策略,以协调攻击。此外,我们还引入了一种专门针对 FSR 中定向攻击的特定防御机制,旨在评估我们提出的攻击方法的缓解效果。广泛的实验验证了我们提出的方法在具有代表性的序列模型上的有效性。
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DV-FSR: A Dual-View Target Attack Framework for Federated Sequential Recommendation
Federated recommendation (FedRec) preserves user privacy by enabling decentralized training of personalized models, but this architecture is inherently vulnerable to adversarial attacks. Significant research has been conducted on targeted attacks in FedRec systems, motivated by commercial and social influence considerations. However, much of this work has largely overlooked the differential robustness of recommendation models. Moreover, our empirical findings indicate that existing targeted attack methods achieve only limited effectiveness in Federated Sequential Recommendation (FSR) tasks. Driven by these observations, we focus on investigating targeted attacks in FSR and propose a novel dualview attack framework, named DV-FSR. This attack method uniquely combines a sampling-based explicit strategy with a contrastive learning-based implicit gradient strategy to orchestrate a coordinated attack. Additionally, we introduce a specific defense mechanism tailored for targeted attacks in FSR, aiming to evaluate the mitigation effects of the attack method we proposed. Extensive experiments validate the effectiveness of our proposed approach on representative sequential models.
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