Federated Learning for 6G Communications: Challenges, Methods, and Future Directions

被引:24
作者
Yi Liu [1 ]
Xingliang Yuan [2 ]
Zehui Xiong [3 ]
Jiawen Kang [4 ]
Xiaofei Wang [5 ]
Dusit Niyato [6 ]
机构
[1] School of Data Science of Technology, Heilongjiang University
[2] Faculty of Information Technology, Monash University
[3] Alibaba-NTU Joint Research Institute and also School of Computer Science and Engineering NTU
[4] Energy Research Institute, Nanyang Technological University
[5] College of Intelligence and Computing, Tianjin University
[6] School of Computer Science and Engineering NTU
关键词
D O I
暂无
中图分类号
TN929.5 [移动通信];
学科分类号
080402 ; 080904 ; 0810 ; 081001 ;
摘要
As the 5G communication networks are being widely deployed worldwide, both industry and academia have started to move beyond 5G and explore 6G communications. It is generally believed that 6G will be established on ubiquitous Artificial Intelligence(AI) to achieve data-driven Machine Learning(ML) solutions in heterogeneous and massive-scale networks. However, traditional ML techniques require centralized data collection and processing by a central server, which is becoming a bottleneck of large-scale implementation in daily life due to significantly increasing privacy concerns. Federated learning, as an emerging distributed AI approach with privacy preservation nature, is particularly attractive for various wireless applications, especially being treated as one of the vital solutions to achieve ubiquitous AI in 6G. In this article, we first introduce the integration of 6G and federated learning and provide potential federated learning applications for 6G. We then describe key technical challenges, the corresponding federated learning methods, and open problems for future research on federated learning in the context of 6G communications.
引用
收藏
页码:105 / 118
页数:14
相关论文
共 4 条
[1]  
What should 6g be? .2 S.Dang,O.Amin et al. Nature Electronics . 2020
[2]  
Reliable federated learning for mobile networks .2 J.Kang et al. IEEE Wireless Communications . 2020
[3]  
Deep gradient compression:Reducing the communication bandwidth for distributed training .2 Y.Lin,S.Han et al. International Conference on Learning Representations . 2018
[4]  
H. A. N[P]. PARK SI BYUNG.韩国专利:KR20080041083A,2008-05-09