Serving Federated Learning and Non-Federated Learning Users: A Massive MIMO Approach

M. Farooq, Thanh Tung Vu, H. Ngo, Le-Nam Tran
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引用次数: 2

Abstract

Federated learning (FL) with its data privacy protection and communication efficiency has been considered as a promising learning framework for beyond-5G/6G systems. We consider a scenario where a group of downlink non-FL users are jointly served with a group of FL users using massive multiple-input multiple-output technology. The main challenge is how to utilise the resource to optimally serve both FL and non-FL users. We propose a communication scheme that serves the downlink of the non-FL users (UEs) and the uplink of FL UEs in each half of the frequency band. We formulate an optimization problem for optimizing transmit power to maximize the minimum effective data rates for non-FL users, while guaranteeing a quality-of-service time of each FL communication round for FL users. Then, a successive convex approximation-based algorithm is proposed to solve the formulated problem. Numerical results confirm that our proposed scheme significantly outperforms the baseline scheme.
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服务联邦学习和非联邦学习用户:大规模MIMO方法
联邦学习(FL)以其数据隐私保护和通信效率被认为是超5g /6G系统的一种有前途的学习框架。我们考虑了一组下行非FL用户与一组使用大规模多输入多输出技术的FL用户共同服务的场景。主要的挑战是如何利用资源来优化地为FL和非FL用户服务。我们提出了一种服务于各半频段非FL用户(ue)的下行链路和FL用户(ue)的上行链路的通信方案。我们制定了一个优化发射功率的优化问题,以最大化非FL用户的最小有效数据速率,同时保证FL用户的每一轮FL通信的服务质量时间。然后,提出了一种基于连续凸逼近的算法来求解公式化问题。数值结果证实了我们提出的方案明显优于基准方案。
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