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Integer Programming Approaches for Appointment Scheduling with Random No-Shows and Service Durations

机译:随机无节目和服务持续时间的约会调度的整数编程方法

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摘要

We consider a single-server scheduling problem given a fixed sequence of appointment arrivals with random no-shows and service durations. The probability distribution of the uncertain parameters is assumed to be ambiguous, and only the support and first moments are known. We formulate a class of distributionally robust (DR) optimization models that incorporate the worst-case expectation/conditional value-at-risk penalty cost of appointment waiting, server idleness, and overtime into the objective or constraints. Our models flexibly adapt to different prior beliefs of no-show uncertainty. We obtain exact mixed-integer nonlinear programming reformulations and derive valid inequalities to strengthen the reformulations that are solved by decomposition algorithms. In particular, we derive convex hulls for special cases of no-show beliefs, yielding polynomial-sized linear programming models for the least and the most conservative supports of no-shows. We test various instances to demonstrate the computational efficacy of our approaches and to compare the results of various DR models given perfect or ambiguous distributional information.
机译:我们考虑一个单服务器调度问题,给出了具有随机无节目和服务持续时间的固定约会序列。假设不确定参数的概率分布是模糊的,并且只知道支持和第一时刻。我们制定一类分类强大(DR)优化模型,该模型将预约,服务器闲置和加班费的最坏情况的预期/条件值 - 风险处罚成本纳入目标或约束。我们的模型灵活地适应不同的尚未显示不确定性的先前信仰。我们获得精确的混合整数非线性编程重构,并导出有效的不等式,以加强通过分解算法解决的重新装修。特别是,我们为特殊情况提供了凸壳,为无节目信念的特殊情况,占据了多项式的线性规划模型,最少和最保守的无节目支持。我们测试各种情况,以展示我们方法的计算效果,并比较各种DR模型的结果给定完美或模糊的分布信息。

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