4.7 Article

Reconfigurable Intelligent Surface Enabled Federated Learning: A Unified Communication-Learning Design Approach

期刊

IEEE TRANSACTIONS ON WIRELESS COMMUNICATIONS
卷 20, 期 11, 页码 7595-7609

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TWC.2021.3086116

关键词

Computational modeling; Wireless communication; Training; Performance evaluation; Data models; Numerical models; Optimization; Edge machine learning; federated learning; reconfigurable intelligent surface; multiple access; over-the-air computation; successive convex approximation; Gibbs sampling

资金

  1. Sichuan Science and Technology Program [2021YFH0014]
  2. National Natural Science Foundation of China [62071090]
  3. General Research Fund by the Hong Kong Research Grants Council [14208017, 14201920]

向作者/读者索取更多资源

Federated learning is proposed as an attractive substitute for centralized machine learning to exploit massive amounts of data generated at mobile edge networks. However, the straggler issue in over-the-air FL, caused by the heterogeneity of communication capacities among edge devices, remains a challenge despite efforts to alleviate it through device selection.
To exploit massive amounts of data generated at mobile edge networks, federated learning (FL) has been proposed as an attractive substitute for centralized machine learning (ML). By collaboratively training a shared learning model at edge devices, FL avoids direct data transmission and thus overcomes high communication latency and privacy issues as compared to centralized ML. To improve the communication efficiency in FL model aggregation, over-the-air computation has been introduced to support a large number of simultaneous local model uploading by exploiting the inherent superposition property of wireless channels. However, due to the heterogeneity of communication capacities among edge devices, over-the-air FL suffers from the straggler issue in which the device with the weakest channel acts as a bottleneck of the model aggregation performance. This issue can be alleviated by device selection to some extent, but the latter still suffers from a tradeoff between data exploitation and model communication. In this paper, we leverage the reconfigurable intelligent surface (RIS) technology to relieve the straggler issue in over-the-air FL. Specifically, we develop a learning analysis framework to quantitatively characterize the impact of device selection and model aggregation error on the convergence of over-the-air FL. Then, we formulate a unified communication-learning optimization problem to jointly optimize device selection, over-the-air transceiver design, and RIS configuration. Numerical experiments show that the proposed design achieves substantial learning accuracy improvement compared with the state-of-the-art approaches, especially when channel conditions vary dramatically across edge devices.

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