4.7 Article

Covert Federated Learning via Intelligent Reflecting Surfaces

期刊

IEEE TRANSACTIONS ON COMMUNICATIONS
卷 71, 期 8, 页码 4591-4604

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCOMM.2023.3281880

关键词

Over-the-air computation; federated learning; covert communication; intelligent reflecting surfaces

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In this paper, we propose a method to support covert over-the-air computation (OAC) using intelligent reflecting surfaces (IRS). By optimizing the joint problem and designing a covert difference-of-convex-functions program (CDC), we can select the maximum covert devices participating in model aggregation while satisfying the mean squared error (MSE) requirement. Simulation results demonstrate that using the IRS in covert OAC can achieve significant performance gain compared to baseline algorithms.
Over-the-air computation (OAC) is a promising technology that can achieve rapid model aggregation by utilizing the wireless waveform superposition feature to harness the interference of multiple-access channel for wireless federated learning (FL). However, OAC-based aggregation for OAC faces critical security challenges due to unfavorable and wireless broadcast properties, such as privacy leaks and eavesdropping attacks. In this paper, we propose to utilize an intelligent reflecting surface (IRS) to support covert OAC-based FL. We first derive the optimal condition for covertness in OAC with IRS and formulate a joint optimization problem to select the maximum covert devices participating in the model aggregation while satisfying the mean squared error (MSE) requirement. We then design a covert difference-of-convex-functions program (CDC) to efficiently determine the transmission power of the device, aggregation beamforming of base station (BS), phase shifts, and reflection amplitudes at the IRS. Simulation results demonstrate that our proposed approach can achieve significant performance gain compared to the baseline algorithms by deploying IRS into covert OAC-based FL.

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