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arxiv: 2201.10281 · v1 · pith:WDWOOBJ2 · submitted 2022-01-25 · cs.IT · math.IT

Latency Fairness Optimization on Wireless Networks through Deep Reinforcement Learning

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classification cs.IT math.IT
keywords delayfairnessstatesuseraveragebalancedeepframework
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In this paper, we propose a novel deep reinforcement learning framework to maximize user fairness in terms of delay. To this end, we devise a new version of the modified largest weighted delay first (M-LWDF) algorithm, which is called $\beta$-M-LWDF, aiming to fulfill an appropriate balance between user fairness and average delay. This balance is defined as a feasible region on the cumulative distribution function (CDF) of the user delay that allows identifying unfair states, feasible-fair states, and over-fair states. Simulation results reveal that our proposed framework outperforms traditional resource allocation techniques in terms of latency fairness and average delay

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