Federated learning (FL) has recently emerged as a promising technology to enable artificial intelligence (AI) at the network edge, where distributed mobile devices collaboratively train a shared AI model under the coordination of an edge server. To significantly improve the communication efficiency of FL, over-the-air computation allows a large number of mobile devices to concurrently upload their local models by exploiting the superposition property of wireless multi-access channels. Due to wireless channel fading, the model aggregation error at the edge server is dominated by the weakest channel among all devices, causing severe straggler issues. In this paper, we propose a relay-assisted cooperative FL scheme to effectively address the straggler issue. In particular, we deploy multiple half-duplex relays to cooperatively assist the devices in uploading the local model updates to the edge server. The nature of the over-the-air computation poses system objectives and constraints that are distinct from those in traditional relay communication systems. Moreover, the strong coupling between the design variables renders the optimization of such a system challenging. To tackle the issue, we propose an alternating-optimization-based algorithm to optimize the transceiver and relay operation with low complexity. Then, we analyze the model aggregation error in a single-relay case and show that our relay-assisted scheme achieves a smaller error than the one without relays provided that the relay transmit power and the relay channel gains are sufficiently large. The analysis provides critical insights on relay deployment in the implementation of cooperative FL. Extensive numerical results show that our design achieves faster convergence compared with state-of-the-art schemes.
翻译:最近,联邦学习(FL)已成为一种大有希望的技术,可以让网络边缘的人工智能(AI)发挥作用,在网络边缘,分布式移动装置在边缘服务器的协调下,合作培训一个共享的AI模型。为了大大提高FL的通信效率,空中计算使大量移动装置能够同时上传其本地模型,利用无线多接入频道的叠加特性。由于无线频道的衰减,边缘服务器的模型集成错误被所有装置中最弱的渠道所控制,造成严重的累赘问题。在本文中,我们提议采用一个中继辅助合作FL计划,以有效解决分流问题。特别是,我们部署多部半曲式的中继器,以合作的方式协助设备向边端服务器上传本地模型的更新。由于高空计算的性质,系统的目标和限制不同于传统的中继通信系统。此外,设计变量之间的强烈交错使这种系统的优化具有挑战性。为了解决这一问题,我们提议采用基于交替式操作的FL合作法合作法,以有效解决分流问题。特别是,我们部署多个半调制模型,以优化中继器设计计划,以优化中转式中继系统的设计设计,以不优化中继系统的一个中继系统实现中转的中转的中转的中转结果,以显示的中转结果显示的中转结果显示。