CFL: Cluster Federated Learning in Large-scale Peer-to-Peer Networks
Qian Chen, Zilong Wang, Yilin Zhou, Jiawei Chen, Dan Xiao, and, Xiaodong Lin

TL;DR
CFL introduces a privacy-preserving, efficient peer-to-peer federated learning protocol that hierarchically aggregates local models, enhancing communication efficiency and robustness in large-scale networks.
Contribution
This work presents the first fine-grained global model training protocol for FL in P2P networks with hierarchical aggregation and enhanced security mechanisms.
Findings
CFL improves communication efficiency by 43.25% over previous protocols.
CFL achieves good classification accuracy and rapid convergence.
The system demonstrates dropout-robustness and resists hijack attacks.
Abstract
Federated learning (FL) has sparked extensive interest in exploiting the private data on clients' local devices. However, the parameter server setting of FL not only has high bandwidth requirements, but also poses data privacy issues and a single point of failure. In this paper, we propose an efficient and privacy-preserving protocol, dubbed CFL, which is the first fine-grained global model training for FL in large-scale peer-to-peer (P2P) networks. Unlike previous FL in P2P networks, CFL aggregates local model update parameters hierarchically, which improves the communication efficiency facing large amounts of clients. Also, the aggregation in CFL is performed in a secure manner by introducing the authenticated encryption scheme, whose key is established through a random pairwise key scheme enhanced by a proposed voting-based key revocation mechanism. Rigorous analyses show that CFL…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
