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Approximate Dynamic Programming with Combined Policy Functions for Solving Multi-stage Nurse Rostering Problem

机译:带有组合策略函数的近似动态规划,用于解决多阶段护士名册问题

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An approximate dynamic programming that incorporates a combined policy, value function approximation and lookahead policy, is proposed. The algorithm is validated by applying it to solve a set of instances of the nurse rostering problem tackled as a multi-stage problem. In each stage of the problem, a weekly roster is constructed taking into consideration historical information about the nurse rosters in the previous week and assuming the future demand for the following weeks as unknown. The proposed method consists of three phases. First, a pre-process phase generates a set of valid shift patterns. Next, a local phase solves the weekly optimization problem using value function approximation policy. Finally, the global phase uses lookahead policy to evaluate the weekly rosters within a lookahead period. Experiments are conducted using instances from the Second International Nurse Rostering Competition and results indicate that the method is able to solve large instances of the problem which was not possible with a previous version of approximate dynamic programming.
机译:提出了一种结合了组合策略,值函数逼近和超前策略的近似动态规划。通过将其应用于解决作为多阶段问题解决的护士排班问题的一组实例,对该算法进行了验证。在问题的每个阶段,都要考虑到前一周有关护士名册的历史信息,并假设未来几周的未来需求未知,以构建每周名册。所提出的方法包括三个阶段。首先,预处理阶段生成一组有效的换档模式。接下来,局部阶段使用值函数近似策略解决每周优化问题。最后,全球阶段使用超前政策来评估超前期内的每周花名册。使用第二届国际护士名册竞赛的实例进行了实验,结果表明该方法能够解决较大的实例问题,而以前的近似动态编程版本则无法解决。

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