Max-Weight Online Stochastic Matching: Improved Approximations Against the Online Benchmark

M. Braverman, M. Derakhshan, Antonio Molina Lovett
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引用次数: 9

Abstract

In this paper, we study max-weight stochastic matchings on online bipartite graphs under both vertex and edge arrivals. We focus on designing polynomial time approximation algorithms with respect to the online benchmark, which was first considered by Papadimitriou, Pollner, Saberi, and Wajc [EC'21]. In the vertex arrival version of the problem, the goal is to find an approximate max-weight matching of a given bipartite graph when the vertices in one part of the graph arrive online in a fixed order with independent chances of failure. Whenever a vertex arrives we should decide, irrevocably, whether to match it with one of its unmatched neighbors or leave it unmatched forever. There has been a long line of work designing approximation algorithms for different variants of this problem with respect to the offline benchmark (prophet). Papadimitriou et al., however, propose the alternative online benchmark and show that considering this new benchmark allows them to improve the 0.5 approximation ratio, which is the best ratio achievable with respect to the offline benchmark. They provide a 0.51-approximation algorithm which was later improved to 0.526 by Saberi and Wajc [ICALP'21]. The main contribution of this paper is designing a simple algorithm with a significantly improved approximation ratio of (1-1/e) for this problem. We also consider the edge arrival version in which, instead of vertices, edges of the graph arrive in an online fashion with independent chances of failure. Designing approximation algorithms for this problem has also been studied extensively with the best approximation ratio being 0.337 with respect to the offline benchmark. This paper, however, is the first to consider the online benchmark for the edge arrival version of the problem. For this problem, we provide a simple algorithm with an approximation ratio of 0.5 with respect to the online benchmark.
最大权重在线随机匹配:针对在线基准的改进逼近
研究了在线二部图在顶点到达和边到达下的最大权随机匹配问题。我们专注于设计关于在线基准的多项式时间逼近算法,这是由Papadimitriou, Pollner, Saberi和Wajc [EC'21]首先考虑的。在该问题的顶点到达版本中,目标是在给定的二部图中,当图的一部分中的顶点以固定的顺序在线并且具有独立的失败概率时,找到一个近似的最大权重匹配。当一个顶点到达时,我们必须决定,是与它的一个不匹配的邻居匹配,还是让它永远不匹配。对于这个问题的不同变体,已经有了关于离线基准(先知)的设计近似算法的长线工作。然而,Papadimitriou等人提出了另一种在线基准,并表明考虑这个新基准可以使他们提高0.5的近似比率,这是相对于离线基准可以实现的最佳比率。他们提供了一个0.51近似算法,后来由Saberi和Wajc [ICALP'21]改进为0.526。本文的主要贡献是设计了一个简单的算法,该算法显著提高了该问题的近似比(1-1/e)。我们还考虑了边缘到达版本,在这个版本中,图的边缘以在线方式到达,具有独立的失败机会,而不是顶点。针对该问题的近似算法设计也得到了广泛的研究,对于离线基准的最佳近似比为0.337。然而,本文是第一个考虑在线基准的边缘到达版本的问题。对于这个问题,我们提供了一个简单的算法,相对于在线基准的近似比为0.5。
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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