Achieving Maximin Share and EFX/EF1 Guarantees Simultaneously

Hannaneh Akrami, Nidhi Rathi
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Abstract

We study the problem of computing \emph{fair} divisions of a set of indivisible goods among agents with \emph{additive} valuations. For the past many decades, the literature has explored various notions of fairness, that can be primarily seen as either having \emph{envy-based} or \emph{share-based} lens. For the discrete setting of resource-allocation problems, \emph{envy-free up to any good} (EFX) and \emph{maximin share} (MMS) are widely considered as the flag-bearers of fairness notions in the above two categories, thereby capturing different aspects of fairness herein. Due to lack of existence results of these notions and the fact that a good approximation of EFX or MMS does not imply particularly strong guarantees of the other, it becomes important to understand the compatibility of EFX and MMS allocations with one another. In this work, we identify a novel way to simultaneously achieve MMS guarantees with EFX/EF1 notions of fairness, while beating the best known approximation factors [Chaudhury et al., 2021, Amanatidis et al., 2020]. Our main contribution is to constructively prove the existence of (i) a partial allocation that is both $2/3$-MMS and EFX, and (ii) a complete allocation that is both $2/3$-MMS and EF1. Our algorithms run in pseudo-polynomial time if the approximation factor for MMS is relaxed to $2/3-\varepsilon$ for any constant $\varepsilon > 0$ and in polynomial time if, in addition, the EFX (or EF1) guarantee is relaxed to $(1-\delta)$-EFX (or $(1-\delta)$-EF1) for any constant $\delta>0$. In particular, we improve from the best approximation factor known prior to our work, which computes partial allocations that are $1/2$-MMS and EFX in pseudo-polynomial time [Chaudhury et al., 2021].
同时实现最大份额和 EFX/EF1 保证
我们研究的问题是,在具有 \emph{additive} 估值的代理人之间计算一组不可分割物品的 \emph{fair} 分配。在过去的几十年里,文献探讨了各种公平概念,这些概念主要可以被看作是具有 (emph{基于嫉妒的)或 (emph{基于分享的)透镜。对于离散环境下的资源分配问题,EFX 和 MMS 被广泛认为是上述两类公平性概念的代表,从而涵盖了公平性的不同方面。由于缺乏这些概念的存在性结果,而且对 EFX 或 MMS 的良好近似并不意味着对另一个概念有特别强的保证,因此了解 EFX 和 MMS 分配之间的兼容性变得非常重要。在这项工作中,我们发现了一种新方法,可以同时实现 MMS 保证与 EFX/EF1 公平性概念,同时击败已知的最佳近似因子 [Chaudhury 等人,2021;Amanatidis 等人,2020]。我们的主要贡献是建设性地证明了存在 (i) 既是 2/3$-MMS 又是 EFX 的部分分配,以及 (ii) 既是 2/3$-MMS 又是 EF1 的完整分配。如果对于任意常数$\varepsilon > 0$,MMS 的近似因子被放宽到$2/3-\varepsilon$,那么我们的算法将在伪多项式时间内运行;此外,如果对于任意常数$\delta > 0$,EFX(或 EF1)保证被放宽到$(1-\delta)$-EFX(或$(1-\delta)$-EF1),那么我们的算法将在多项式时间内运行。特别是,我们改进了我们工作之前已知的最佳近似因子,即在伪多项式时间内计算出 1/2$-MMS 和EFX 的部分分配[Chaudhury 等人,2021]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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