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Hierarchical Split Federated Learning: Convergence Analysis and System Optimization

  • Zheng Lin
  • , Wei Wei
  • , Zhe Chen
  • , Chan Tong Lam
  • , Xianhao Chen
  • , Yue Gao
  • , Jun Luo
  • The University of Hong Kong
  • Fudan University
  • Nanyang Technological University

研究成果: Article同行評審

31 引文 斯高帕斯(Scopus)

摘要

As AI models expand in size, it has become increasingly challenging to deploy federated learning (FL) on resource-constrained edge devices. To tackle this issue, split federated learning (SFL) has emerged as an FL framework with reduced workload on edge devices via model splitting; it has received extensive attention from the research community in recent years. Nevertheless, most prior works on SFL focus only on a two-tier architecture without harnessing multi-tier cloud-edge computing resources. In this paper, we intend to analyze and optimize the learning performance of SFL under multi-tier systems. Specifically, we propose the hierarchical SFL (HSFL) framework and derive its convergence bound. Based on the theoretical results, we formulate a joint optimization problem for model splitting (MS) and model aggregation (MA). To solve this rather hard problem, we then decompose it into MS and MA sub-problems that can be solved via an iterative descending algorithm. Simulation results demonstrate that the tailored algorithm can effectively optimize MS and MA in multi-tier systems and significantly outperform existing schemes.

原文English
頁(從 - 到)9352-9367
頁數16
期刊IEEE Transactions on Mobile Computing
24
發行號10
DOIs
出版狀態Published - 2025

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