LGNov 1, 2021

Robust Federated Learning via Over-The-Air Computation

arXiv:2111.01221v420 citations
Originality Incremental advance
AI Analysis

It addresses security issues in federated learning for distributed systems, but appears incremental.

This paper tackles the vulnerability of over-the-air federated learning to Byzantine attacks by proposing a robust transmission and aggregation framework, with numerical simulations confirming its effectiveness.

This paper investigates the robustness of over-the-air federated learning to Byzantine attacks. The simple averaging of the model updates via over-the-air computation makes the learning task vulnerable to random or intended modifications of the local model updates of some malicious clients. We propose a robust transmission and aggregation framework to such attacks while preserving the benefits of over-the-air computation for federated learning. For the proposed robust federated learning, the participating clients are randomly divided into groups and a transmission time slot is allocated to each group. The parameter server aggregates the results of the different groups using a robust aggregation technique and conveys the result to the clients for another training round. We also analyze the convergence of the proposed algorithm. Numerical simulations confirm the robustness of the proposed approach to Byzantine attacks.

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