计算机科学
多输入多输出
正交频分多址
数学优化
无线
相干时间
连贯性(哲学赌博策略)
凸优化
最优化问题
算法
正多边形
波束赋形
正交频分复用
计算机网络
数学
电信
频道(广播)
统计
几何学
作者
Tung T. Vu,Duy T. Ngo,Nguyen H. Tran,Hien Quoc Ngo,Minh N. Dao,Richard H. Middleton
标识
DOI:10.1109/twc.2020.3002988
摘要
This paper proposes a novel scheme for cell-free massive multiple-input multiple-output (CFmMIMO) networks to support any federated learning (FL) framework. This scheme allows each instead of all the iterations of the FL framework to happen in a large-scale coherence time to guarantee a stable operation of an FL process. To show how to optimize the FL performance using this proposed scheme, we consider an existing FL framework as an example and target FL training time minimization for this framework. An optimization problem is then formulated to jointly optimize the local accuracy, transmit power, data rate, and users' processing frequency. This mixed-timescale stochastic nonconvex problem captures the complex interactions among the training time, and transmission and computation of training updates of one FL process. By employing the online successive convex approximation approach, we develop a new algorithm to solve the formulated problem with proven convergence to the neighbourhood of its stationary points. Our numerical results confirm that the presented joint design reduces the training time by up to 55% over baseline approaches. They also show that CFmMIMO here requires the lowest training time for FL processes compared with cell-free time-division multiple access massive MIMO and collocated massive MIMO.
科研通智能强力驱动
Strongly Powered by AbleSci AI