作者
Wenchao Xia, Wanli Wen, Kai-Kit Wong, Tony QS Quek, Jun Zhang, Hongbo Zhu
发表日期
2021/4
期刊
IEEE Wireless Communications
卷号
28
期号
2
页码范围
32-38
出版商
IEEE
简介
Motivated by the ever-increasing demands for massive data processing and intelligent data analysis at the network edge, federated learning (FL), a distributed architecture for machine learning, has been introduced to enhance edge intelligence without compromising data privacy. Nonetheless, due to the large number of edge devices (referred to as clients in FL) with only limited wireless resources, client scheduling, which chooses only a subset of devices to participate in each round of FL, becomes a more feasible option. Unfortunately, the training latency can be intolerable in the iterative process of FL. To tackle the challenge, this article introduces update-importance-based client scheduling schemes to reduce the required number of rounds. Then latency-based client scheduling schemes are proposed to shorten the time interval for each round. We consider the scenario where no prior information regarding the …
引用总数
学术搜索中的文章
W Xia, W Wen, KK Wong, TQS Quek, J Zhang, H Zhu - IEEE Wireless Communications, 2021