Personalized federated learning via directed acyclic graph based blockchain

IET Blockchain Pub Date : 2023-10-25 DOI:10.1049/blc2.12054
Chenglong Huang, Erwu Liu, Rui Wang, Yan Liu, Hanfu Zhang, Yuanzhe Geng, Jie Wang, Shaoyi Han
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引用次数: 0

Abstract

Common federated learning (FL) lacks consideration of clients' personalized requirements, which performs poorly for the scenario with data and resource heterogeneity. In order to overcome the challenge of heterogeneous characteristics, this letter proposes a novel decentralized personalized federated learning (PFL) architecture that first utilizes a directed acyclic graph (DAG) blockchain technology to achieve PFL efficiently, which is called PFLDAG. Simulation results demonstrate that PFLDAG approximately improves accuracy by 80% compared with the classic Google FedAvg algorithm, and by 10% compared with IFCA cluster PFL which considers personalized requirements. In addition, the approach also substantially improves the convergence speed.

Abstract Image

通过基于有向无环图的区块链实现个性化联合学习
普通的联合学习(FL)缺乏对客户个性化需求的考虑,在数据和资源异构的场景下表现不佳。为了克服异构特性带来的挑战,本文提出了一种新颖的去中心化个性化联合学习(PFL)架构,首先利用有向无环图(DAG)区块链技术来高效实现PFL,即PFLDAG。仿真结果表明,与经典的谷歌 FedAvg 算法相比,PFLDAG 的准确率提高了约 80%,与考虑了个性化需求的 IFCA 集群 PFL 相比,准确率提高了 10%。此外,该方法还大大提高了收敛速度。
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