Federated Ensemble Model-Based Reinforcement Learning in Edge Computing

被引:13
|
作者
Wang, Jin [1 ]
Hu, Jia [1 ]
Mills, Jed [1 ]
Min, Geyong [1 ]
Xia, Ming [2 ]
Georgalas, Nektarios [3 ]
机构
[1] Univ Exeter, Dept Comp Sci, Exeter EX4 4PY, England
[2] Google, Mountain View, CA 94043 USA
[3] British Telecommun PLC, Appl Res Dept, London EC1A 7AJ, England
基金
欧盟地平线“2020”; 英国工程与自然科学研究理事会;
关键词
Computational modeling; Data models; Heuristic algorithms; Training; Edge computing; Reinforcement learning; Analytical models; Deep reinforcement learning; distributed machine learning; edge computing; federated learning;
D O I
10.1109/TPDS.2023.3264480
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
Federated learning (FL) is a privacy-preserving distributed machine learning paradigm that enables collaborative training among geographically distributed and heterogeneous devices without gathering their data. Extending FL beyond the supervised learning models, federated reinforcement learning (FRL) was proposed to handle sequential decision-making problems in edge computing systems. However, the existing FRL algorithms directly combine model-free RL with FL, thus often leading to high sample complexity and lacking theoretical guarantees. To address the challenges, we propose a novel FRL algorithm that effectively incorporates model-based RL and ensemble knowledge distillation into FL for the first time. Specifically, we utilise FL and knowledge distillation to create an ensemble of dynamics models for clients, and then train the policy by solely using the ensemble model without interacting with the environment. Furthermore, we theoretically prove that the monotonic improvement of the proposed algorithm is guaranteed. The extensive experimental results demonstrate that our algorithm obtains much higher sample efficiency compared to classic model-free FRL algorithms in the challenging continuous control benchmark environments under edge computing settings. The results also highlight the significant impact of heterogeneous client data and local model update steps on the performance of FRL, validating the insights obtained from our theoretical analysis.
引用
收藏
页码:1848 / 1859
页数:12
相关论文
共 50 条
  • [21] Model-based Federated Reinforcement Distillation
    Ryu, Sefutsu
    Takamaeda-Yamazaki, Shinya
    2022 IEEE GLOBAL COMMUNICATIONS CONFERENCE (GLOBECOM 2022), 2022, : 1109 - 1114
  • [22] Privacy Preservation for Federated Learning With Robust Aggregation in Edge Computing
    Liu, Wentao
    Xu, Xiaolong
    Li, Dejuan
    Qi, Lianyong
    Dai, Fei
    Dou, Wanchun
    Ni, Qiang
    IEEE INTERNET OF THINGS JOURNAL, 2023, 10 (08) : 7343 - 7355
  • [23] Encrypted Data Caching and Learning Framework for Robust Federated Learning-Based Mobile Edge Computing
    Nguyen, Chi-Hieu
    Saputra, Yuris Mulya
    Hoang, Dinh Thai
    Nguyen, Diep N.
    Nguyen, Van-Dinh
    Xiao, Yong
    Dutkiewicz, Eryk
    IEEE-ACM TRANSACTIONS ON NETWORKING, 2024, 32 (03) : 2705 - 2720
  • [24] Edge Computing Based on Federated Learning for Machine Monitoring
    Tsai, Yao-Hong
    Chang, Dong-Meau
    Hsu, Tse-Chuan
    APPLIED SCIENCES-BASEL, 2022, 12 (10):
  • [25] Distributed Deep Reinforcement Learning-Based Gradient Quantization for Federated Learning Enabled Vehicle Edge Computing
    Zhang, Cui
    Zhang, Wenjun
    Wu, Qiong
    Fan, Pingyi
    Fan, Qiang
    Wang, Jiangzhou
    Letaief, Khaled B.
    IEEE INTERNET OF THINGS JOURNAL, 2025, 12 (05): : 4899 - 4913
  • [26] Resource Allocation in IoT Edge Computing via Concurrent Federated Reinforcement Learning
    Tianqing Zhu
    Zhou, Wei
    Ye, Dayong
    Cheng, Zishuo
    Li, Jin
    IEEE INTERNET OF THINGS JOURNAL, 2022, 9 (02) : 1414 - 1426
  • [27] Energy-Aware, Device-to-Device Assisted Federated Learning in Edge Computing
    Li, Yuchen
    Liang, Weifa
    Li, Jing
    Cheng, Xiuzhen
    Yu, Dongxiao
    Zomaya, Albert Y.
    Guo, Song
    IEEE TRANSACTIONS ON PARALLEL AND DISTRIBUTED SYSTEMS, 2023, 34 (07) : 2138 - 2154
  • [28] ASMAFL: Adaptive Staleness-Aware Momentum Asynchronous Federated Learning in Edge Computing
    Qiao, Dewen
    Guo, Songtao
    Zhao, Jun
    Le, Junqing
    Zhou, Pengzhan
    Li, Mingyan
    Chen, Xuetao
    IEEE TRANSACTIONS ON MOBILE COMPUTING, 2025, 24 (04) : 3390 - 3406
  • [29] Accelerating Federated Learning With Data and Model Parallelism in Edge Computing
    Liao, Yunming
    Xu, Yang
    Xu, Hongli
    Yao, Zhiwei
    Wang, Lun
    Qiao, Chunming
    IEEE-ACM TRANSACTIONS ON NETWORKING, 2024, 32 (01) : 904 - 918
  • [30] PFLF: Privacy-Preserving Federated Learning Framework for Edge Computing
    Zhou, Hao
    Yang, Geng
    Dai, Hua
    Liu, Guoxiu
    IEEE TRANSACTIONS ON INFORMATION FORENSICS AND SECURITY, 2022, 17 : 1905 - 1918