Federated Learning for Wireless Communications: Motivation, Opportunities, and Challenges

被引:376
|
作者
Niknam, Solmaz [1 ]
Dhillon, Harpreet S. [1 ]
Reed, Jeffrey H. [1 ]
机构
[1] Wireless VT, Blacksburg, VA 24060 USA
关键词
Training; Wireless communication; Data models; Distributed databases; Computational modeling; 5G mobile communication; Wireless sensor networks;
D O I
10.1109/MCOM.001.1900461
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
There is a growing interest in the wireless communications community to complement the traditional model-driven design approaches with data-driven machine learning (ML)-based solutions. While conventional ML approaches rely on the assumption of having the data and processing heads in a central entity, this is not always feasible in wireless communications applications because of the inaccessibility of private data and large communication overhead required to transmit raw data to central ML processors. As a result, decentralized ML approaches that keep the data where it is generated are much more appealing. Due to its privacy-preserving nature, federated learning is particularly relevant for many wireless applications, especially in the context of fifth generation (5G) networks. In this article, we provide an accessible introduction to the general idea of federated learning, discuss several possible applications in 5G networks, and describe key technical challenges and open problems for future research on federated learning in the context of wireless communications.
引用
收藏
页码:46 / 51
页数:6
相关论文
共 50 条
  • [1] Federated Edge Learning for the Wireless Physical Layer:Opportunities and Challenges
    Yiming Cui
    Jiajia Guo
    Xiangyi Li
    Le Liang
    Shi Jin
    [J]. China Communications, 2022, 19 (08) : 15 - 30
  • [2] Federated Edge Learning for the Wireless Physical Layer: Opportunities and Challenges
    Cui, Yiming
    Guo, Jiajia
    Li, Xiangyi
    Liang, Le
    Jin, Shi
    [J]. CHINA COMMUNICATIONS, 2022, 19 (08) : 15 - 30
  • [3] Federated Learning and Wireless Communications
    Qin, Zhijin
    Li, Geoffrey Ye
    Ye, Hao
    [J]. IEEE WIRELESS COMMUNICATIONS, 2021, 28 (05) : 134 - 140
  • [4] Wireless Communications for Collaborative Federated Learning
    Chen, Mingzhe
    Poor, H. Vincent
    Saad, Walid
    Cui, Shuguang
    [J]. IEEE COMMUNICATIONS MAGAZINE, 2020, 58 (12) : 48 - 54
  • [5] FEDERATED LEARNING CHALLENGES AND OPPORTUNITIES: AN OUTLOOK
    Ding, Jie
    Tramel, Eric
    Sahu, Anit Kumar
    Wu, Shuang
    Avestimehr, Salman
    Zhang, Tao
    [J]. 2022 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING (ICASSP), 2022, : 8752 - 8756
  • [6] Federated Multiagent Deep Reinforcement Learning for Intelligent IoT Wireless Communications: Overview and Challenges
    De Oliveira, Hugo
    Kaneko, Megumi
    Boukhatem, Lila
    [J]. IEEE VEHICULAR TECHNOLOGY MAGAZINE, 2024, : 73 - 82
  • [7] SoC for COFDM wireless communications: Challenges and opportunities
    Lee, Chen-Yi
    Liu, Hsuan-Yu
    Lin, Chien-Ching
    [J]. 2006 INTERNATIONAL SYMPOSIUM ON VLSI DESIGN, AUTOMATION, AND TEST (VLSI-DAT), PROCEEDINGS OF TECHNICAL PAPERS, 2006, : 67 - +
  • [8] Challenges and Opportunities of Future Rural Wireless Communications
    Zhang, Yaguang
    Love, David J.
    Krogmeier, James, V
    Anderson, Christopher R.
    Heath, Robert W.
    Buckmaster, Dennis R.
    [J]. IEEE COMMUNICATIONS MAGAZINE, 2021, 59 (12) : 16 - 22
  • [9] Incentive Mechanism Design for Federated Learning: Challenges and Opportunities
    Zhan, Yufeng
    Li, Peng
    Guo, Song
    Qu, Zhihao
    [J]. IEEE NETWORK, 2021, 35 (04): : 310 - 317
  • [10] Wireless Communications with Unmanned Aerial Vehicles: Opportunities and Challenges
    Zeng, Yong
    Zhang, Rui
    Lim, Teng Joon
    [J]. IEEE COMMUNICATIONS MAGAZINE, 2016, 54 (05) : 36 - 42