Convergence of Federated Learning over a Noisy Downlink
Mohammad Mohammadi Amiri, Deniz Gunduz, Sanjeev R. Kulkarni, H., Vincent Poor

TL;DR
This paper investigates how limited wireless bandwidth affects federated learning, proposing analog downlink transmission as a more efficient alternative to digital methods, and analyzing its convergence and performance benefits.
Contribution
It introduces an analog downlink transmission scheme for federated learning over noisy channels and analyzes its convergence, showing significant advantages over digital approaches in power-limited settings.
Findings
Analog downlink outperforms digital in power efficiency.
Convergence is maintained with analog transmission despite channel noise.
Fewer local iterations are needed with biased data or better global model estimates.
Abstract
We study federated learning (FL), where power-limited wireless devices utilize their local datasets to collaboratively train a global model with the help of a remote parameter server (PS). The PS has access to the global model and shares it with the devices for local training, and the devices return the result of their local updates to the PS to update the global model. This framework requires downlink transmission from the PS to the devices and uplink transmission from the devices to the PS. The goal of this study is to investigate the impact of the bandwidth-limited shared wireless medium in both the downlink and uplink on the performance of FL with a focus on the downlink. To this end, the downlink and uplink channels are modeled as fading broadcast and multiple access channels, respectively, both with limited bandwidth. For downlink transmission, we first introduce a digital…
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