PipAttack: Poisoning Federated Recommender Systems forManipulating Item Promotion
Shijie Zhang, Hongzhi Yin, Tong Chen, Zi Huang, Quoc Viet, Hung Nguyen, Lizhen Cui

TL;DR
This paper introduces a novel poisoning attack on federated recommender systems that exploits popularity bias to promote targeted items, revealing vulnerabilities and the ineffectiveness of current defenses.
Contribution
It presents a systematic backdoor attack method that leverages popularity bias in federated recommenders, demonstrating its effectiveness and exposing defense limitations.
Findings
The attack significantly increases target item exposure.
The attack maintains recommendation accuracy.
Current defenses are insufficient against this attack.
Abstract
Due to the growing privacy concerns, decentralization emerges rapidly in personalized services, especially recommendation. Also, recent studies have shown that centralized models are vulnerable to poisoning attacks, compromising their integrity. In the context of recommender systems, a typical goal of such poisoning attacks is to promote the adversary's target items by interfering with the training dataset and/or process. Hence, a common practice is to subsume recommender systems under the decentralized federated learning paradigm, which enables all user devices to collaboratively learn a global recommender while retaining all the sensitive data locally. Without exposing the full knowledge of the recommender and entire dataset to end-users, such federated recommendation is widely regarded `safe' towards poisoning attacks. In this paper, we present a systematic approach to backdooring…
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Taxonomy
TopicsRecommender Systems and Techniques · Privacy-Preserving Technologies in Data · Stochastic Gradient Optimization Techniques
