论文标题
多对多稳定匹配的容量变化
Capacity Variation in the Many-to-one Stable Matching
论文作者
论文摘要
众多稳定的匹配问题提供了几个现实世界中匹配市场的基本抽象,例如学校选择和医院居民分配。双方的特工通常被称为居民和医院。经典设置假定代理人对相反的一侧进行排名,并且医院的能力是固定的。众所周知,增加一家医院的能力可以改善居民的最终分配。另一方面,减少单个医院的容量会恶化居民的分配。在这项工作中,我们研究了发现医院能力的最佳变化的计算复杂性,这会导致居民最佳结果,但要遵守稳定性和容量变化约束。首先,我们表明,找到最佳容量扩展的决策问题是NP完整的,并且相应的优化问题在某个因素内是不合适的。该结果是严格而完整的偏好,即使我们将额外的能力分配给脱节医院。其次,我们获得了减小能力问题的类似计算复杂性结果。最后,当目标是在不完整的偏好列表下最大化最终匹配的大小时,我们研究了这些问题的变体。
The many-to-one stable matching problem provides the fundamental abstraction of several real-world matching markets such as school choice and hospital-resident allocation. The agents on both sides are often referred to as residents and hospitals. The classical setup assumes that the agents rank the opposite side and that the capacities of the hospitals are fixed. It is known that increasing the capacity of a single hospital improves the residents' final allocation. On the other hand, reducing the capacity of a single hospital deteriorates the residents' allocation. In this work, we study the computational complexity of finding the optimal variation of hospitals' capacities that leads to the best outcome for the residents, subject to stability and a capacity variation constraint. First, we show that the decision problem of finding the optimal capacity expansion is NP-complete and the corresponding optimization problem is inapproximable within a certain factor. This result holds under strict and complete preferences, and even if we allocate extra capacities to disjoint sets of hospitals. Second, we obtain analogous computational complexity results for the problem of capacity reduction. Finally, we study the variants of these problems when the goal is to maximize the size of the final matching under incomplete preference lists.