Adaptive Transmission Scheduling in Wireless Networks for Asynchronous Federated Learning
Hyun-Suk Lee, Jang-Won Lee

TL;DR
This paper introduces adaptive transmission scheduling algorithms for asynchronous federated learning in wireless networks, improving learning efficiency and robustness under system uncertainties and resource constraints.
Contribution
It proposes the effectivity score metric and three ALS algorithms (ALSA-PI, BALSA, BALSA-PO) for optimized asynchronous FL scheduling considering system uncertainties.
Findings
ALS algorithms achieve near-ideal performance in simulations.
Proposed methods outperform existing scheduling algorithms.
Algorithms enhance model accuracy, training speed, and robustness.
Abstract
In this paper, we study asynchronous federated learning (FL) in a wireless distributed learning network (WDLN). To allow each edge device to use its local data more efficiently via asynchronous FL, transmission scheduling in the WDLN for asynchronous FL should be carefully determined considering system uncertainties, such as time-varying channel and stochastic data arrivals, and the scarce radio resources in the WDLN. To address this, we propose a metric, called an effectivity score, which represents the amount of learning from asynchronous FL. We then formulate an Asynchronous Learning-aware transmission Scheduling (ALS) problem to maximize the effectivity score and develop three ALS algorithms, called ALSA-PI, BALSA, and BALSA-PO, to solve it. If the statistical information about the uncertainties is known, the problem can be optimally and efficiently solved by ALSA-PI. Even if not,…
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Taxonomy
MethodsAdaptive Label Smoothing
