We consider the stability of matchings when individuals strategically submit preference information to a publicly known algorithm. Most pure Nash equilibria of the ensuing game yield a matching that is unstable with respect to the individuals' sincere preferences. We introduce a well-supported minimal dishonesty constraint, and obtain conditions under which every pure Nash equilibrium yields a matching that is stable with respect to the sincere preferences. The conditions on the matching algorithm are to be either fully-randomized, or monotonic and independent of non-spouses (INS), an IIA-like property. These conditions are significant because they support the use of algorithms other than the Gale-Shapley (man-optimal) algorithm for kidney exchange and other applications. We prove that the Gale-Shapley algorithm always yields the woman-optimal matching when individuals are minimally dishonest. However, we give a negative answer to one of Gusfield and Irving's open questions: there is no monotonic INS or fully-randomized stable matching algorithm that is certain to yield the egalitarian-optimal matching when individuals are strategic and minimally dishonest. Finally, we show that these results extend to the student placement problem, where women are polyandrous but must be honest but do not extend to the admissions problem, where women are both polyandrous and strategic.
翻译:当个人从战略角度向公开的算法提交偏好信息时,我们考虑匹配的稳定性。大多数纯粹的Nash 均衡的随后游戏的纯净 Nash 平衡产生一个与个人的真诚偏好相比的不稳的匹配。我们引入了一种支持的最低限度不诚实的限制,并获得了每个纯纳什均衡产生与真诚偏好相比稳定匹配的条件。但是,匹配算法的条件要么是完全随机化的,要么是单调的,要么是独立于非配偶(IIA类财产)的单调和独立。这些条件很重要,因为它们支持使用与肾脏交换和其他应用不同的算法。我们证明,Gale-Shapley算法总是在个人最不诚实的情况下产生女性最佳匹配。然而,我们给Gusfield和Irving这两个问题给出了否定的答案:没有单调 INS 或完全随机化的稳定匹配算法,它们肯定在个人具有战略和最低不诚实的情况下产生平等-最佳匹配性。最后,我们证明Gale-Shaply 算法总是产生女性的学习问题。