You Can Backdoor Personalized Federated Learning
Tiandi Ye, Cen Chen, Yinggui Wang, Xiang Li, Ming Gao

TL;DR
This paper reveals that personalized federated learning methods with parameter decoupling remain vulnerable to backdoor attacks, and introduces BapFL, a new attack strategy that effectively compromises such systems despite existing defenses.
Contribution
The paper identifies vulnerabilities in parameter decoupled pFL methods and proposes BapFL, a novel attack approach that challenges current defense mechanisms.
Findings
BapFL effectively poisons feature encoders while maintaining classifier diversity.
Existing defenses like Multi-Krum are insufficient against BapFL.
Backdoor attacks remain a significant threat in personalized federated learning.
Abstract
Existing research primarily focuses on backdoor attacks and defenses within the generic federated learning scenario, where all clients collaborate to train a single global model. A recent study conducted by Qin et al. (2023) marks the initial exploration of backdoor attacks within the personalized federated learning (pFL) scenario, where each client constructs a personalized model based on its local data. Notably, the study demonstrates that pFL methods with \textit{parameter decoupling} can significantly enhance robustness against backdoor attacks. However, in this paper, we whistleblow that pFL methods with parameter decoupling are still vulnerable to backdoor attacks. The resistance of pFL methods with parameter decoupling is attributed to the heterogeneous classifiers between malicious clients and benign counterparts. We analyze two direct causes of the heterogeneous classifiers:…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
