Defending Against Diverse Attacks in Federated Learning Through Consensus-Based Bi-Level Optimization
Abstract
Adversarial attacks pose significant challenges in many machine learning applications, particularly in the setting of distributed training and federated learning, where malicious agents seek to corrupt the training process with the goal of jeopardizing and compromising the performance and reliability of the final models. In this paper, we address the problem of robust federated learning in the presence of such attacks by formulating the training task as a bi-level optimization problem. We conduct a theoretical analysis of the resilience of consensus-based bi-level optimization (CBO), an interacting multi-particle metaheuristic optimization method, in adversarial settings. Specifically, we provide a global convergence analysis of CBO in mean-field law in the presence of malicious agents, demonstrating the robustness of CBO against a diverse range of attacks. Thereby, we offer insights into how specific hyperparameter choices enable to mitigate adversarial effects. On the practical side, we extend CBO to the clustered federated learning setting by proposing FedCBO, a novel interacting multi-particle system, and design a practical algorithm that addresses the demands of real-world applications. Extensive experiments demonstrate the robustness of the FedCBO algorithm against label-flipping attacks in decentralized clustered federated learning scenarios, showcasing its effectiveness in practical contexts.
Cite
@article{arxiv.2412.02535,
title = {Defending Against Diverse Attacks in Federated Learning Through Consensus-Based Bi-Level Optimization},
author = {Nicolás García Trillos and Aditya Kumar Akash and Sixu Li and Konstantin Riedl and Yuhua Zhu},
journal= {arXiv preprint arXiv:2412.02535},
year = {2025}
}