Lurking in the shadows: Unveiling Stealthy Backdoor Attacks against Personalized Federated Learning
Xiaoting Lyu, Yufei Han, Wei Wang, Jingkai Liu, Yongsheng Zhu,, Guangquan Xu, Jiqiang Liu, Xiangliang Zhang

TL;DR
This paper investigates the vulnerabilities of personalized federated learning (PFL) to stealthy backdoor attacks, introduces a new attack method called PFedBA, and demonstrates its effectiveness against existing defenses.
Contribution
It presents PFedBA, a novel backdoor attack tailored for PFL, showing its ability to bypass current defenses and highlighting the need for improved security measures.
Findings
PFedBA effectively embeds backdoors into personalized models.
Existing defenses are often insufficient against PFedBA.
PFL systems remain vulnerable despite personalization and defense strategies.
Abstract
Federated Learning (FL) is a collaborative machine learning technique where multiple clients work together with a central server to train a global model without sharing their private data. However, the distribution shift across non-IID datasets of clients poses a challenge to this one-model-fits-all method hindering the ability of the global model to effectively adapt to each client's unique local data. To echo this challenge, personalized FL (PFL) is designed to allow each client to create personalized local models tailored to their private data. While extensive research has scrutinized backdoor risks in FL, it has remained underexplored in PFL applications. In this study, we delve deep into the vulnerabilities of PFL to backdoor attacks. Our analysis showcases a tale of two cities. On the one hand, the personalization process in PFL can dilute the backdoor poisoning effects injected…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
