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
  • [41] Split Federated Learning and Reinforcement based Codec Switching in Edge Platform
    Karjee, Jyotirmoy
    Naik, Praveen S.
    Srinidhi, N.
    2023 IEEE INTERNATIONAL CONFERENCE ON CONSUMER ELECTRONICS, ICCE, 2023,
  • [42] Partially Collaborative Edge Caching Based on Federated Deep Reinforcement Learning
    Lei, Meng
    Li, Qiang
    Ge, Xiaohu
    Pandharipande, Ashish
    IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, 2023, 72 (01) : 1389 - 1394
  • [43] Prototyping federated learning on edge computing systems
    Jianlei Yang
    Yixiao Duan
    Tong Qiao
    Huanyu Zhou
    Jingyuan Wang
    Weisheng Zhao
    Frontiers of Computer Science, 2020, 14
  • [44] Federated Deep Learning for Heterogeneous Edge Computing
    Ahmed, Khandaker Mamun
    Imteaj, Ahmed
    Amini, M. Hadi
    20TH IEEE INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND APPLICATIONS (ICMLA 2021), 2021, : 1146 - 1152
  • [45] Prototyping federated learning on edge computing systems
    Yang, Jianlei
    Duan, Yixiao
    Qiao, Tong
    Zhou, Huanyu
    Wang, Jingyuan
    Zhao, Weisheng
    FRONTIERS OF COMPUTER SCIENCE, 2020, 14 (06)
  • [46] Federated Learning Protocols for IoT Edge Computing
    Foukalas, Fotis
    Tziouvaras, Athanasios
    IEEE INTERNET OF THINGS JOURNAL, 2022, 9 (15) : 13570 - 13581
  • [47] Bias Mitigation in Federated Learning for Edge Computing
    Djebrouni, Yasmine
    Benarba, Nawel
    Touat, Ousmane
    De Rosa, Pasquale
    Bouchenak, Sara
    Bonifati, Angela
    Felber, Pascal
    Marangozova, Vania
    Schiavoni, Valerio
    PROCEEDINGS OF THE ACM ON INTERACTIVE MOBILE WEARABLE AND UBIQUITOUS TECHNOLOGIES-IMWUT, 2023, 7 (04):
  • [48] Federated Learning in Edge Computing: A Systematic Survey
    Abreha, Haftay Gebreslasie
    Hayajneh, Mohammad
    Serhani, Mohamed Adel
    SENSORS, 2022, 22 (02)
  • [49] Federated Learning Game in IoT Edge Computing
    Durand, Stephane
    Khawam, Kinda
    Quadri, Dominique
    Lahoud, Samer
    Martin, Steven
    IEEE ACCESS, 2024, 12 : 93060 - 93074
  • [50] Federated Learning for Distributed Reasoning on Edge Computing
    Firouzi, Ramin
    Rahmani, Rahim
    Kanter, Theo
    12TH INTERNATIONAL CONFERENCE ON AMBIENT SYSTEMS, NETWORKS AND TECHNOLOGIES (ANT) / THE 4TH INTERNATIONAL CONFERENCE ON EMERGING DATA AND INDUSTRY 4.0 (EDI40) / AFFILIATED WORKSHOPS, 2021, 184 : 419 - 427