In the max-min allocation problem a set $P$ of players are to be allocated disjoint subsets of a set $R$ of indivisible resources, such that the minimum utility among all players is maximized. We study the restricted variant, also known as the Santa Claus problem, where each resource has an intrinsic positive value, and each player covets a subset of the resources. Bez\'akov\'a and Dani showed that this problem is NP-hard to approximate within a factor less than $2$, consequently a great deal of work has focused on approximate solutions. The principal approach for obtaining approximation algorithms has been via the Configuration LP (CLP) of Bansal and Sviridenko. Accordingly, there has been much interest in bounding the integrality gap of this CLP. The existing algorithms and integrality gap estimations are all based one way or another on the combinatorial augmenting tree argument of Haxell for finding perfect matchings in certain hypergraphs. Our main innovation in this paper is to introduce the use of topological methods for the restricted max-min allocation problem, to replace the combinatorial argument. This approach yields substantial improvements in the integrality gap of the CLP. In particular we improve the previously best known bound of $3.808$ to $3.534$. We also study the $(1,\varepsilon)$-restricted version, in which resources can take only two values, and improve the integrality gap in most cases.
翻译:在最大分配问题中,一组固定的花花花公子将分拨一套固定的零用美元,这是一组不可分割的资源,因此所有花花公子的最低限度效用是最大化的。我们研究了限制性的变式,又称圣诞老人问题,其中每种资源都有内在的积极价值,每个花花一子的资源。Bez\'akov\'a和Dani显示,这个问题很难在低于2美元的一个系数范围内估计,因此,大量工作集中在大约的解决方案上。获得近似算法的主要方法是通过Bansal和Sviridenko的配置 LP(CLP) 获得最低效用。因此,人们非常希望将这个CLP的内在差距捆绑起来。现有的算法和整体差距估计都以这样或那样的方式为基础,Haxell在寻找某些超强的完美匹配值方面增加了树根比力。我们在本文件中的主要创新是采用顶级方法处理有限的最大差额分配问题,用的是Bansal和Sviridenkonical 问题, 也就是用我们所知道的最接近的CLPLA 。