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Ranking on Arbitrary Graphs: Rematch via Continuous LP with Monotone and Boundary Condition Constraints

机译:任意图的排序:通过连续Lp与单调和边界条件约束的重新匹配

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摘要

Motivated by online advertisement and exchange settings, greedy randomized algorithms for the maximum matching problem have been studied, in which the algorithm makes (random) decisions that are essentially oblivious to the input graph. Any greedy algorithm can achieve performance ratio 0.5, which is the expected number of matched nodes to the number of nodes in a maximum matching.Since Aronson, Dyer, Frieze and Suen proved that the Modified Randomized Greedy algorithm achieves performance ratio 0.5+ ∊ (where ) on arbitrary graphs in the mid-nineties, no further attempts in the literature have been made to improve this theoretical ratio for arbitrary graphs until two papers were published in FOCS 2012.In this paper, we revisit the Ranking algorithm using the LP framework. Special care is given to analyze the structural properties of the Ranking algorithm in order to derive the LP constraints, of which one known as the boundary constraint requires totally new analysis and is crucial to the success of our LP.We use continuous LP relaxation to analyze the limiting behavior as the finite LP grows. Of particular interest are new duality and complementary slackness characterizations that can handle the monotone and the boundary constraints in continuous LP. Our work achieves the currently best theoretical performance ratio of on arbitrary graphs. Moreover, experiments suggest that Ranking cannot perform better than 0.724 in general.
机译:受在线广告和交换设置的激励,研究了用于最大匹配问题的贪婪随机算法,其中该算法做出(随机)决策,而该决策基本上忽略了输入图。任何贪心算法都可以达到0.5的性能比,这是预期匹配的节点数与最大匹配中的节点数的期望值.Aronson,Dyer,Frieze和Suen证明了改进的随机贪婪算法可以达到0.5+ ∊(其中)在90年代中期的任意图上,直到FOCS 2012上发表了两篇论文之前,文献中都没有进行任何尝试来提高该理论图的理论比率。本文中,我们使用LP框架重新审视了Rank算法。为了得出LP约束,我们特别注意分析Rank算法的结构特性,其中一种称为边界约束的方法需要全新的分析,这对我们LP的成功至关重要。有限LP增长时的限制行为。特别令人感兴趣的是可以处理连续LP中的单调和边界约束的新对偶性和互补松弛特性。我们的工作实现了任意图上目前最佳的理论性能比。此外,实验表明,排名通常不能优于0.724。

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