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Mathematical models for stable matching problems with ties and incomplete lists

机译:稳定匹配问题的数学模型与不完整列表

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We present new integer linear programming (ILP) models for NP-hard optimisation problems in instances of the Stable Marriage problem with Ties and Incomplete lists (SMTI) and its many-to-one generalisation, the Hospitals/Residents problem with Ties (HRT). These models can be used to efficiently solve these optimisation problems when applied to (i) instances derived from real-world applications, and (ii) larger instances that are randomly-generated. In the case of SMTI, we consider instances arising from the pairing of children with adoptive families, where preferences are obtained from a quality measure of each possible pairing of child to family. In this case, we seek a maximum weight stable matching. We present new algorithms for preprocessing instances of SMTI with ties on both sides, as well as new ILP models. Algorithms based on existing state-of-the-art models only solve 6 of our 22 real-world instances within an hour per instance, and our new models incorporating dummy variables and constraint merging, together with preprocessing and a warm start, solve all 22 instances within a mean runtime of a minute. For HRT, we consider instances derived from the problem of assigning junior doctors to foundation posts in Scottish hospitals. Here, we seek a maximum size stable matching. We show how to extend our models for SMTI to HRT and reduce the average running time for real-world HRT instances by two orders of magnitude. We also show that our models outperform by a wide margin all known state-of-the-art models on larger randomly-generated instances of SMTI and HRT. (C) 2019 The Authors. Published by Elsevier B.V.
机译:我们线性规划(ILP)模型在稳定的婚姻问题,领带和不完全名单(SMTI)和它的许多对一个概括,医院/居民问题,领带(HRT)的情况下,NP难题的优化问题,提出了新的整数。这些模型可以用来当施加于从现实世界的应用(i)衍生实例来有效地解决这些优化问题,和(ii),其随机产生的较大的实例。在SMTI的情况下,我们考虑从与收养家庭,其中偏好从孩子的每个可能配对家庭的质量测量获得孩子的配对出现的情况。在这种情况下,我们追求的是最大权重稳定匹配。我们提出了新的算法预处理SMTI的情况下,对双方的关系,以及新车型ILP。基于现有的国家的最先进的车型算法只是每个实例在一小时内解决我们22真实世界的实例6,和我们的结合虚拟变量和约束合并,连同预处理和热启动新机型,解决了所有22一分钟的平均运行中的实例。对于HRT,我们认为从在苏格兰医院基座柱分配初级医生的问题衍生的实例。在这里,我们追求的是最大尺寸稳定的匹配。我们将展示如何为SMTI扩大我们的模型,HRT和两个数量级减少现实世界HRT情况下的平均运行时间。我们还表明,我们的模型跑赢大市大幅所有已知的SMTI和HRT的大型随机产生的情况下,国家的最先进的车型。 (c)2019年作者。由elsevier b.v出版。

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