Federated Learning via Intelligent Reflecting Surface
Zhibin Wang, Jiahang Qiu, Yong Zhou, Yuanming Shi, Liqun Fu, Wei Chen,, Khaled B. Lataief

TL;DR
This paper introduces a novel IRS-assisted federated learning framework that jointly optimizes device selection, beamforming, and IRS phase shifts to enhance model aggregation performance over wireless channels.
Contribution
It proposes a two-step optimization framework with difference-of-convex programming to improve federated learning efficiency using IRS technology.
Findings
Achieves lower training loss compared to baselines
Improves FL prediction accuracy with IRS deployment
Enhances model aggregation reliability in wireless channels
Abstract
Over-the-air computation (AirComp) based federated learning (FL) is capable of achieving fast model aggregation by exploiting the waveform superposition property of multiple access channels. However, the model aggregation performance is severely limited by the unfavorable wireless propagation channels. In this paper, we propose to leverage intelligent reflecting surface (IRS) to achieve fast yet reliable model aggregation for AirComp-based FL. To optimize the learning performance, we formulate an optimization problem that jointly optimizes the device selection, the aggregation beamformer at the base station (BS), and the phase shifts at the IRS to maximize the number of devices participating in the model aggregation of each communication round under certain mean-squared-error (MSE) requirements. To tackle the formulated highly-intractable problem, we propose a two-step optimization…
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