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Competing in a queue for resource allocations among non-cooperative

机译:在非合作社中竞争队列进行资源分配

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In this paper, we investigate a multi-agent noncooperative game for resource allocations based on an M/D/l queuing model. Specifically, agents with common goals to maximize utility are deployed to compete with each other to bid or bribe for quicker service provided by the server. The bid/bribe of each agent in the queue is not revealed, but the outcomes, in terms of the pair of (bid/bribe; total waiting time), are publicly available from the server. Agents choose from one of three available strategies: random strategy, Nash equilibrium strategy and linear regression strategy, for their decision-makings. Bayesian update is integrated into the linear regression technique for searching an optimal bid/bribe. Besides, weighted average, second order autoregressive process (AR(2)), and random walk are utilized to predict service speed. After each agent obtained service, it reevaluates its strategy and adjusts it accordingly. Results show that in the long run, the dominant strategy depends on the service speed. When the service speed is low, random strategy dominates the society. But if the service speed is high, linear regression strategy dominates. The model can be extended to study agent-based social simulations and decentralized scheduling for resource allocations in an open multi-agent system.
机译:在本文中,我们研究了基于M / D / L排队模型的资源分配的多代理非转换游戏。具体而言,部署具有最大化实用程序的共同目标的代理以彼此竞争,以便以供服务器提供的更快服务竞争或贿赂。队列中每个代理的出价/贿赂没有透露,但在一对(出价/贿赂;总等待时间)方面的结果是公开提供的。代理商从三种可用策略之一中选择:随机策略,纳什均衡战略和线性回归策略,为其决策制备。贝叶斯更新集成到用于搜索最佳出价/贿赂的线性回归技术。此外,加权平均值,二阶自回归过程(AR(2))和随机散步用于预测服务速度。在每个代理获得服务后,它会重新评估其策略并相应调整它。结果表明,从长远来看,主导战略取决于服务速度。当服务速度低时,随机策略主导了社会。但如果服务速度很高,线性回归策略占主导地位。该模型可以扩展到研究基于代理的社交仿真和分散调度,以便在开放式多算机系统中进行资源分配。

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