Cross-FCL: Toward a Cross-Edge Federated Continual Learning Framework in Mobile Edge Computing Systems

被引:12
作者
Zhang, Zhouyangzi [1 ]
Guo, Bin [1 ]
Sun, Wen [2 ]
Liu, Yan [1 ]
Yu, Zhiwen [1 ]
机构
[1] Northwestern Polytech Univ, Dept Comp Sci, Xian 710072, Peoples R China
[2] Northwestern Polytech Univ, Dept Cybersecur, Xian, Peoples R China
关键词
Task analysis; Servers; Federated learning; Training; Computational modeling; Data models; Computer architecture; continual learning; mobile edge computing;
D O I
10.1109/TMC.2022.3223944
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Federated Learning (FL) in mobile edge computing (MEC) systems has recently been studied extensively. In ubiquitous environments, there are usually cross-edge devices that learn a series of tasks across multiple independent edge FL systems. Due to the differences in the scenarios and tasks of different FL systems, cross-edge devices will forget past tasks after learning new tasks, which is unacceptable for devices that pay system costs to participate in FL. Continual learning (CL) is a viable solution to this problem, which aims to train a model to learn a series of tasks without forgetting old knowledge. Currently, there is no work to investigate the problem of CL in a cross-edge FL scenario. In this paper, we propose Cross-FCL, a Cross-edge Federated Continual Learning framework. Specifically, it enables devices to retain the knowledge learned in the past when participating in new task training through a parameter decomposition based FCL model. Then various cross-edge strategies are introduced, including biased global aggregation and local optimization, to trade off memory and adaptation. We conducted experiments on a real-world dataset and other public datasets. Extensive experiments demonstrate that Cross-FCL achieves best accuracy on IID and highly non-IID tasks with a low storage cost compared to other baselines.
引用
收藏
页码:313 / 326
页数:14
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