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Adaptive Dynamic Bipartite Graph Matching: A Reinforcement Learning Approach

机译:自适应动态二部图匹配:一种强化学习方法

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Online bipartite graph matching is attracting growing research attention due to the development of dynamic task assignment in sharing economy applications, where tasks need be assigned dynamically to workers. Past studies lack practicability in terms of both problem formulation and solution framework. On the one hand, some problem settings in prior online bipartite graph matching research are impractical for real-world applications. On the other hand, existing solutions to online bipartite graph matching are inefficient due to the unnecessary real-time decision making. In this paper, we propose the dynamic bipartite graph matching (DBGM) problem to be better aligned with real-world applications and devise a novel adaptive batch-based solution framework with a constant competitive ratio. As an effective and efficient implementation of the solution framework, we design a reinforcement learning based algorithm, called Restricted Q-learning (RQL), which makes near-optimal decisions on batch splitting. Extensive experimental results on both real and synthetic datasets show that our methods outperform the state-of-the-arts in terms of both effectiveness and efficiency.
机译:由于共享经济应用程序中动态任务分配的发展(需要将任务动态分配给工人),在线二部图匹配吸引了越来越多的研究关注。过去的研究在问题表述和解决方案框架方面都缺乏实用性。一方面,先前的在线二部图匹配研究中的某些问题设置对于实际应用是不切实际的。另一方面,由于不必要的实时决策,在线二分图匹配的现有解决方案效率低下。在本文中,我们提出了动态二部图匹配(DBGM)问题,以更好地与实际应用匹配,并设计出一种具有恒定竞争比的新型自适应基于批次的解决方案框架。作为解决方案框架的有效高效实现,我们设计了一种基于强化学习的算法,称为受限Q学习(RQL),该算法在批次拆分方面做出了近乎最佳的决策。在真实数据集和合成数据集上的大量实验结果表明,就有效性和效率而言,我们的方法优于最新技术。

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