Age of Information Based Client Selection for Wireless Federated Learning With Diversified Learning Capabilities

被引:0
作者
Dong, Liran [1 ,2 ,3 ]
Zhou, Yiqing [1 ,2 ,3 ]
Liu, Ling [1 ,2 ,3 ]
Qi, Yanli [1 ,2 ,3 ]
Zhang, Yu [1 ,2 ,3 ]
机构
[1] Chinese Acad Sci, Inst Comp Technol, State Key Lab Processors, Beijing 100190, Peoples R China
[2] Beijing Key Lab Mobile Comp & Pervas Device, Beijing 100190, Peoples R China
[3] Univ Chinese Acad Sci, Beijing 100049, Peoples R China
关键词
Training; Computational modeling; Servers; Data models; Wireless communication; Mobile computing; Accuracy; Federated learning (FL); age of information (AoI); client selection; fairness scheduling; COMMUNICATION; CONVERGENCE; DEVICES; DESIGN;
D O I
10.1109/TMC.2024.3450549
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Federated Learning (FL) empowers wireless intelligent applications, by leveraging distributed data of edge clients for training without compromising privacy. Client selection is inevitable in FL, since clients have diversified learning capabilities arising from heterogeneous computing and communication resources. Existing methods like fair-selection and dropping-straggler are either inefficient or unfair (resulting in a less effective trained model). Therefore, we propose FedAoI, an Age-of-Information (AoI) based client selection policy. FedAoI ensures fairness by allowing all clients, including stragglers, to submit their model updates while maintaining high training efficiency by keeping round completion times short. This trade-off is achieved by minimizing Peak-AoI (PAoI), the interval between a client's consecutive participations. An optimization problem is formulated by minimizing the Expected-Weighted-Sum-of-PAoI. This NP-hard problem is addressed with a two-step sub-optimal algorithm, PriorS. It first calculates client priority in a round using Lyapunov optimization and then selects the highest-priority clients through G-FPFC (Greedy minimization of the round weighted-sum-of-PAoI with First-Priority-First-Considered). Simulation results demonstrate that, compared to fair-selection, FedAoI improves average efficiency by 83.8% and achieves an average model accuracy of 97.3% (or at the cost of averaging 2.7% degradation in model accuracy). Compared to dropping-straggler, FedAoI reduces the average model accuracy degradation from 9.5% to 2.7%.
引用
收藏
页码:14934 / 14945
页数:12
相关论文
共 50 条
  • [41] CSTAR-FL: Stochastic Client Selection for Tree All-Reduce Federated Learning
    Xu, Zimu
    Di Maio, Antonio
    Samikwa, Eric
    Braun, Torsten
    [J]. IEEE TRANSACTIONS ON MOBILE COMPUTING, 2025, 24 (04) : 3110 - 3129
  • [42] Client Selection Method for Federated Learning Based on Grouping Reinforcement Learning
    Li, Guo-ming
    Liu, Wai-xi
    Guo, Zhen-zheng
    Chen, Dao-xiao
    [J]. 2024 9TH INTERNATIONAL CONFERENCE ON COMPUTER AND COMMUNICATION SYSTEMS, ICCCS 2024, 2024, : 327 - 332
  • [43] Virtual Experience-Based Mobile Device Selection Algorithm for Federated Learning
    Paik, Mincheol
    Ko, Haneul
    Pack, Sangheon
    [J]. IEEE SYSTEMS JOURNAL, 2023, 17 (02): : 2294 - 2303
  • [44] Data Distribution-Aware Online Client Selection Algorithm for Federated Learning in Heterogeneous Networks
    Lee, Jaewook
    Ko, Haneul
    Seo, Sangwon
    Pack, Sangheon
    [J]. IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, 2023, 72 (01) : 1127 - 1136
  • [45] Enhancing Federated Learning With Pattern-Based Client Clustering
    Gao, Yuan
    Lin, Ziyue
    Gong, Maoguo
    Zhang, Yuanqiao
    Zhang, Yihong
    [J]. IEEE INTERNET OF THINGS JOURNAL, 2024, 11 (24): : 40365 - 40375
  • [46] Low-Latency Federated Learning Over Wireless Channels With Differential Privacy
    Wei, Kang
    Li, Jun
    Ma, Chuan
    Ding, Ming
    Chen, Cailian
    Jin, Shi
    Han, Zhu
    Poor, H. Vincent
    [J]. IEEE JOURNAL ON SELECTED AREAS IN COMMUNICATIONS, 2022, 40 (01) : 290 - 307
  • [47] A Contribution-Based Device Selection Scheme in Federated Learning
    Pandey, Shashi Raj
    Nguyen, Lam D.
    Popovski, Petar
    [J]. IEEE COMMUNICATIONS LETTERS, 2022, 26 (09) : 2057 - 2061
  • [48] Reputation-Based Model Aggregation and Resource Optimization in Wireless Federated Learning Systems
    Feng, Jie
    Liao, Yanyan
    Liu, Lei
    Pei, Qingqi
    Zhang, Ning
    Li, Keqin
    [J]. IEEE TRANSACTIONS ON WIRELESS COMMUNICATIONS, 2025, 24 (04) : 3149 - 3162
  • [49] Client-Side Optimization Strategies for Communication-Efficient Federated Learning
    Mills, Jed
    Hu, Jia
    Min, Geyong
    [J]. IEEE COMMUNICATIONS MAGAZINE, 2022, 60 (07) : 60 - 66
  • [50] Mutual Information Driven Federated Learning
    Uddin, Md Palash
    Xiang, Yong
    Lu, Xuequan
    Yearwood, John
    Gao, Longxiang
    [J]. IEEE TRANSACTIONS ON PARALLEL AND DISTRIBUTED SYSTEMS, 2021, 32 (07) : 1526 - 1538