不知道矩阵的随机分配矩阵秘书的持续竞争力

Richard Santiago, I. Sergeev, R. Zenklusen
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引用次数: 0

摘要

矩阵秘书猜想是在线优化中一个臭名昭著的开放性问题。证明了矩阵秘书问题(MSP)的$O(1)$竞争算法的存在性。在这里,加权矩阵的元素一个接一个地出现,在外观上显示它们的权重,任务是在线选择元素,目标是获得最大可能权重的独立集合。$O(1)$竞争MSP算法到目前为止只获得了限制矩阵类和MSP变化,包括随机分配MSP (RA-MSP),其中对手固定了一些等于矩阵的基本集大小的权重,然后将其随机分配给基本集的元素。不幸的是,这些方法严重依赖于事先了解完整的矩阵。这可以说是一个不受欢迎的要求,并且有充分的理由相信解决MSP猜想的方法不应该依赖于它。因此,Soto [SIAM Journal on Computing 2013]和Oveis Gharan&Vondrak [Algorithmica 2013]都提出了一个悬而未决的问题,即RA-MSP是否承认一种0(1)美元竞争的算法,即使事先不知道矩阵。在这部作品中,我们肯定地回答了这个问题。我们的结果使RA-MSP成为第一个众所周知的具有$O(1)$竞争算法的MSP变体,该算法不需要预先知道底层矩阵,也不需要对底层矩阵进行任何限制。我们的方法是基于首先近似学习矩阵的秩-密度曲线,然后我们利用算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Constant-Competitiveness for Random Assignment Matroid Secretary Without Knowing the Matroid
The Matroid Secretary Conjecture is a notorious open problem in online optimization. It claims the existence of an $O(1)$-competitive algorithm for the Matroid Secretary Problem (MSP). Here, the elements of a weighted matroid appear one-by-one, revealing their weight at appearance, and the task is to select elements online with the goal to get an independent set of largest possible weight. $O(1)$-competitive MSP algorithms have so far only been obtained for restricted matroid classes and for MSP variations, including Random-Assignment MSP (RA-MSP), where an adversary fixes a number of weights equal to the ground set size of the matroid, which then get assigned randomly to the elements of the ground set. Unfortunately, these approaches heavily rely on knowing the full matroid upfront. This is an arguably undesirable requirement, and there are good reasons to believe that an approach towards resolving the MSP Conjecture should not rely on it. Thus, both Soto [SIAM Journal on Computing 2013] and Oveis Gharan&Vondrak [Algorithmica 2013] raised as an open question whether RA-MSP admits an $O(1)$-competitive algorithm even without knowing the matroid upfront. In this work, we answer this question affirmatively. Our result makes RA-MSP the first well-known MSP variant with an $O(1)$-competitive algorithm that does not need to know the underlying matroid upfront and without any restriction on the underlying matroid. Our approach is based on first approximately learning the rank-density curve of the matroid, which we then exploit algorithmically.
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