Authors
Kaibin Wang, Qiang He, Feifei Chen, Hai Jin, Yun Yang
Publication date
2023/4/30
Book
Proceedings of the ACM Web Conference 2023
Pages
2895-2904
Description
Federated learning (FL) has been widely acknowledged as a promising solution to training machine learning (ML) model training with privacy preservation. To reduce the traffic overheads incurred by FL systems, edge servers have been included between clients and the parameter server to aggregate clients’ local models. Recent studies on this edge-assisted hierarchical FL scheme have focused on ensuring or accelerating model convergence by coping with various factors, e.g., uncertain network conditions, unreliable clients, heterogeneous compute resources, etc. This paper presents our three new discoveries of the edge-assisted hierarchical FL scheme: 1) it wastes significant time during its two-phase training rounds; 2) it does not recognize or utilize model diversity when producing a global model; and 3) it is vulnerable to model poisoning attacks. To overcome these drawbacks, we propose FedEdge, a novel …
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Scholar articles
K Wang, Q He, F Chen, H Jin, Y Yang - Proceedings of the ACM Web Conference 2023, 2023