Multi-Agent Reinforcement Learning for a Random Access Game
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8
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10

초록

This work investigates a random access (RA) game for a time-slotted RA system, where N players choose a set of slots of a frame and each frame consists of M multiple time slots. We obtain the pure strategy Nash equilibria (PNEs) of this RA game, where slots are fully utilized as in the centralized scheduling. As an algorithm to realize a PNE (Pure strategy Nash Equilibrium), we propose an Exponential-weight algorithm for Exploration and Exploitation (EXP3)-based multi-agent (MA) learning algorithm, which has the computational complexity of O(N (NmaxT)-T-2). EXP3 is a bandit algorithm designed to find an optimal strategy in a multi-armed bandit (MAB) problem that users do not know the expected payoff of each strategy. Our simulation results show that the proposed algorithm can achieve PNEs. Moreover, it can adapt to time-varying environments, where the number of players varies over time.

키워드

Multi-armed banditnash equilibriumnon-cooperative gamerandom accessALOHA
제목
Multi-Agent Reinforcement Learning for a Random Access Game
저자
Lee, DongwooZhao, YuSeo, Jun-BaeLee, Joohyun
DOI
10.1109/TVT.2022.3176722
발행일
2022-08
유형
Article
저널명
IEEE Transactions on Vehicular Technology
71
8
페이지
9119 ~ 9124