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Decision Support for Agent Populations in Uncertain and Congested Environments

机译:不确定和拥挤环境中对代理人员群体的决策支持

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This research is motivated by large scale problems in urban transportation and labor mobility where there is congestion for resources and uncertainty in movement. In such domains, even though the individual agents do not have an identity of their own and do not explicitly interact with other agents, they effect other agents. While there has been much research in handling such implicit effects, it has primarily assumed deterministic movements of agents. We address the issue of decision support for individual agents that are identical and have involuntary movements in dynamic environments. For instance, in a taxi fleet serving a city, when a taxi is hired by a customer, its movements are uncontrolled and depend on (a) the customers requirement; and (b) the location of other taxis in the fleet. Towards addressing decision support in such problems, we make two key contributions: (a) A framework to represent the decision problem for selfish individuals in a dynamic population, where there is transitional uncertainty (involuntary movements); and (b) Two techniques (Fictitious Play for Symmetric Agent Populations, FP-SAP and Soft-max based Flow Update, SMFU) that converge to equilibrium solutions. We show that our techniques (apart from providing equilibrium strategies) outperform "driver" strategies with respect to overall availability of taxis and the revenue obtained by the taxi drivers. We demonstrate this on a real world data set with 8,000 taxis and 83 zones (representing the entire area of Singapore).
机译:这项研究的动机是城市交通和劳动力流动中的大量问题,这些地方存在资源拥挤和流动不确定性的问题。在这样的域中,即使单个代理没有自己的身份并且未与其他代理明确交互,它们也会影响其他代理。尽管在处理此类隐式效应方面已有许多研究,但它主要假设了主体的确定性运动。我们针对在动态环境中相同且具有非自愿移动的单个代理解决决策支持的问题。例如,在为城市服务的出租车队中,当客户租用出租车时,其运动是不受控制的,并取决于(a)客户的要求; (b)车队中其他出租车的位置。为了解决此类问题中的决策支持,我们做出了两个关键贡献:(a)一个框架,用于为存在过渡不确定性(非自愿运动)的动态人口中自私的个体表示决策问题; (b)收敛到平衡解的两种技术(针对对称代理种群的虚拟游戏,FP-SAP和基于Soft-max的流程更新,SMFU)。我们表明,就出租车的整体可用性和出租车司机获得的收入而言,我们的技术(除了提供均衡策略外)还优于“驾驶员”策略。我们用8,000个出租车和83个区域(代表新加坡的整个区域)的真实世界数据集进行了演示。

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