多对一匹配问题的最优容量修改

Jiehua Chen, Gergely Cs'aji
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引用次数: 1

摘要

我们考虑多对一匹配问题,其中一方由学生组成,另一方由能力受限的学校组成。我们研究如何最优地增加学校的容量,以获得稳定和完美的匹配(即每个学生都匹配)或对学生来说是稳定和帕累托效率的匹配。我们考虑了两个常见的最优性标准,一个旨在最小化所有学校的容量增加总和(简称。作为最小值)和另一个旨在最小化任何学校的最大容量增长(缩写。极大极小)。我们在计算复杂性方面得到了一个完整的画面:除了使用多项式时间可解的MinMax准则的稳定和完美匹配外,其余三个问题都是np困难的。我们进一步研究了参数化的复杂性和近似性,发现通过最小容量增加实现稳定和帕累托有效匹配比实现稳定和完美匹配要困难得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Capacity Modification for Many-To-One Matching Problems
We consider many-to-one matching problems, where one side consists of students and the other side of schools with capacity constraints. We study how to optimally increase the capacities of the schools so as to obtain a stable and perfect matching (i.e., every student is matched) or a matching that is stable and Pareto-efficient for the students. We consider two common optimality criteria, one aiming to minimize the sum of capacity increases of all schools (abbrv. as MinSum) and the other aiming to minimize the maximum capacity increase of any school (abbrv. as MinMax). We obtain a complete picture in terms of computational complexity: Except for stable and perfect matchings using the MinMax criteria which is polynomial-time solvable, all three remaining problems are NP-hard. We further investigate the parameterized complexity and approximability and find that achieving stable and Pareto-efficient matchings via minimal capacity increases is much harder than achieving stable and perfect matchings.
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