SegOTA: Accelerating Over-the-Air Federated Learning with Segmented Transmission
SegOTA: Accelerating Over-the-Air Federated Learning with Segmented Transmission
Federated learning (FL) with over-the-air computation efficiently utilizes the communication resources, but it can still experience significant latency when each device transmits a large number of model parameters to the server. This paper proposes the Segmented Over-The-Air (SegOTA) method for FL, which reduces latency by partitioning devices into groups and letting each group transmit only one segment of the model parameters in each communication round. Considering a multi-antenna server, we model the SegOTA transmission and reception process to establish an upper bound on the expected model learning optimality gap. We minimize this upper bound, by formulating the per-round online optimization of device grouping and joint transmit-receive beamforming, for which we derive efficient closed-form solutions. Simulation results show that our proposed SegOTA substantially outperforms the conventional full-model OTA approach and other common alternatives.
Min Dong、Ben Liang、Chong Zhang、Ali Afana、Yahia Ahmed
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Min Dong,Ben Liang,Chong Zhang,Ali Afana,Yahia Ahmed.SegOTA: Accelerating Over-the-Air Federated Learning with Segmented Transmission[EB/OL].(2025-04-13)[2025-07-09].https://arxiv.org/abs/2504.09745.点此复制
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