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Two-Sided Matching for mentor-mentee allocations—Algorithms and manipulation strategies

机译:指导者与指导者分配的两面匹配-算法和操作策略

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摘要

In scenarios where allocations are determined by participant’s preferences, Two-Sided Matching is a well-established approach with applications in College Admissions, School Choice, and Mentor-Mentee matching problems. In such a context, participants in the matching have preferences with whom they want to be matched with. This article studies two important concepts in Two-Sided Matching: multiple objectives when finding a solution, and manipulation of preferences by participants. We use real data sets from a Mentor-Mentee program for the evaluation to provide insight on realistic effects and implications of the two concepts. In the first part of the article, we consider the quality of solutions found by different algorithms using a variety of solution criteria. Most current algorithms focus on one criterion (number of participants matched), while not directly taking into account additional objectives. Hence, we evaluate different algorithms, including multi-objective heuristics, and the resulting trade-offs. The evaluation shows that existing algorithms for the considered problem sizes perform similarly well and close to the optimal solution, yet multi-objective heuristics provide the additional benefit of yielding solutions with better quality on multiple criteria. In the second part, we consider the effects of different types of preference manipulation on the participants and the overall solution. Preference manipulation is a concept that is well established in theory, yet its practical effects on the participants and the solution quality are less clear. Hence, we evaluate the effects of three manipulation strategies on the participants and the overall solution quality, and investigate if the effects depend on the used solution algorithm as well.
机译:在根据参与者的偏好决定分配的情况下,双向匹配是一种行之有效的方法,可用于大学入学,学校选择和导师与门徒匹配问题。在这种情况下,匹配的参与者具有他们想与之匹配的偏好。本文研究了双向匹配中的两个重要概念:寻找解决方案时的多个目标,以及参与者对偏好的操纵。我们使用来自Mentor-Mentee程序的真实数据集进行评估,以提供有关这两个概念的现实效果和含义的见解。在本文的第一部分中,我们考虑使用各种解决方案标准通过不同算法找到的解决方案的质量。当前大多数算法专注于一个标准(匹配的参与者数量),而没有直接考虑其他目标。因此,我们评估了不同的算法,包括多目标启发式算法以及由此产生的取舍。评估表明,针对所考虑的问题大小的现有算法的性能相似,并且接近最佳解决方案,但是多目标启发式方法提供了在多个条件下生成质量更高的解决方案的额外好处。在第二部分中,我们考虑了不同类型的偏好操纵对参与者和整体解决方案的影响。偏好操纵是一个理论上已经确立的概念,但是它对参与者的实际影响和解决方案的质量尚不清楚。因此,我们评估了三种操作策略对参与者和整体解决方案质量的影响,并研究了这些影响是否也取决于所使用的解决方案算法。

著录项

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  • 作者

    Christian Haas; Margeret Hall;

  • 作者单位
  • 年(卷),期 -1(14),3
  • 年度 -1
  • 页码 e0213323
  • 总页数 27
  • 原文格式 PDF
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