Massive Digital Over-the-Air Computation for Communication-Efficient Federated Edge Learning

Li Qiao;Zhen Gao;Mahdi Boloursaz Mashhadi;Deniz Gündüz
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Abstract

Over-the-air computation (AirComp) is a promising technology converging communication and computation over wireless networks, which can be particularly effective in model training, inference, and more emerging edge intelligence applications. AirComp relies on uncoded transmission of individual signals, which are added naturally over the multiple access channel thanks to the superposition property of the wireless medium. Despite significantly improved communication efficiency, how to accommodate AirComp in the existing and future digital communication networks, that are based on discrete modulation schemes, remains a challenge. This paper proposes a massive digital AirComp (MD-AirComp) scheme, that leverages an unsourced massive access protocol, to enhance compatibility with both current and next-generation wireless networks. MD-AirComp utilizes vector quantization to reduce the uplink communication overhead, and employs shared quantization and modulation codebooks. At the receiver, we propose a near-optimal approximate message passing-based algorithm to compute the model aggregation results from the superposed sequences, which relies on estimating the number of devices transmitting each code sequence, rather than trying to decode the messages of individual transmitters. We apply MD-AirComp to federated edge learning (FEEL), and show that it significantly accelerates FEEL convergence compared to state-of-the-art while using the same amount of communication resources.
为实现高通信效率的联盟边缘学习而进行的大规模空中数字计算
空中计算(AirComp)是通过无线网络融合通信和计算的一项前景广阔的技术,在模型训练、推理和更多新兴边缘智能应用中尤为有效。AirComp 依靠的是单个信号的无编码传输,由于无线介质的叠加特性,这些信号会在多路接入信道上自然叠加。尽管通信效率大幅提高,但如何在现有和未来基于离散调制方案的数字通信网络中适应 AirComp 仍然是一个挑战。本文提出了一种大规模数字 AirComp(MD-AirComp)方案,该方案利用无源大规模接入协议,增强了与当前和下一代无线网络的兼容性。MD-AirComp 利用矢量量化来减少上行链路通信开销,并采用共享量化和调制编码本。在接收器上,我们提出了一种基于近似消息传递的近似最优算法,用于计算叠加序列的模型聚合结果,该算法依赖于估计传输每个编码序列的设备数量,而不是尝试解码单个发射器的消息。我们将 MD-AirComp 应用于联合边缘学习 (FEEL),结果表明,与最先进的算法相比,MD-AirComp 能显著加快 FEEL 的收敛速度,同时使用相同数量的通信资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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