Blind Federated Edge Learning
Mohammad Mohammadi Amiri, Tolga M. Duman, Deniz Gunduz, Sanjeev R., Kulkarni, H. Vincent Poor

TL;DR
This paper proposes an over-the-air federated edge learning scheme that leverages multiple antennas at the parameter server to mitigate the effects of imperfect channel state information, improving convergence and performance.
Contribution
It introduces a novel analog aggregation method without requiring channel state information at devices and designs a beamforming scheme at the PS to enhance learning accuracy.
Findings
Performance improves with more PS antennas.
The proposed method compensates for lack of perfect CSI.
Convergence rate analysis shows robustness to channel imperfections.
Abstract
We study federated edge learning (FEEL), where wireless edge devices, each with its own dataset, learn a global model collaboratively with the help of a wireless access point acting as the parameter server (PS). At each iteration, wireless devices perform local updates using their local data and the most recent global model received from the PS, and send their local updates to the PS over a wireless fading multiple access channel (MAC). The PS then updates the global model according to the signal received over the wireless MAC, and shares it with the devices. Motivated by the additive nature of the wireless MAC, we propose an analog `over-the-air' aggregation scheme, in which the devices transmit their local updates in an uncoded fashion. Unlike recent literature on over-the-air edge learning, here we assume that the devices do not have channel state information (CSI), while the PS has…
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