论文标题
可重新配置的智能表面启用联合学习:一种统一的沟通学习设计方法
Reconfigurable Intelligent Surface Enabled Federated Learning: A Unified Communication-Learning Design Approach
论文作者
论文摘要
为了利用在移动边缘网络上生成的大量数据,已提出联邦学习(FL)作为集中机器学习(ML)的有吸引力的替代品。通过在Edge设备上进行协作训练共享的学习模型,FL可以避免直接数据传输,从而克服与集中式ML相比的高通信延迟和隐私问题。为了提高FL模型聚合中的通信效率,已经引入了无线计算,以通过利用无线通道的固有叠加属性来支持大量同时的本地模型上传。但是,由于边缘设备之间通信能力的异质性,空中FL遭受了Straggler问题,其中最弱的通道设备充当模型聚合性能的瓶颈。设备选择可以在某种程度上通过设备选择来缓解这个问题,但是后者仍然遭受数据开发和模型通信之间的权衡。在本文中,我们利用可重构的智能表面(RIS)技术来缓解佛罗里达州的Straggler问题。具体而言,我们开发了一个学习分析框架,以定量地表征设备选择和模型聚合误差对空中FL收敛的影响。然后,我们制定一个统一的通信学习优化问题,以共同优化设备选择,直播收发器设计和RIS配置。数值实验表明,与最先进的方法相比,所提出的设计可实现实质性的学习精度提高,尤其是当频道条件在边缘设备之间变化较大时。
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.