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首页> 外文期刊>SIAM Journal on Computing >AN ALGORITHMIC PROOF OF THE LOVASZ LOCAL LEMMA VIA RESAMPLING ORACLES
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AN ALGORITHMIC PROOF OF THE LOVASZ LOCAL LEMMA VIA RESAMPLING ORACLES

机译:通过重新采样的oracles的Lovasz本地引理的算法证明

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The Lovasz local lemma is a seminal result in probabilistic combinatorics. It gives a sufficient condition on a probability space and a collection of events for the existence of an outcome that simultaneously avoids all of those events. Finding such an outcome by an efficient algorithm has been an active research topic for decades. The breakthrough work of Moser [A constructive proof of the Lovasz local lemma, in Proceedings of the ACM International Symposium on Theory of Computing, 2009, pp. 343-350] and Moser and Tardos [J. ACM, 57 (2010), 11] presented an efficient algorithm for a general setting primarily characterized by a product structure on the probability space. In this work we present an efficient algorithm for a much more general setting. Our main assumption is that there exist certain functions, called resampling oracles, that can be invoked to address the undesired occurrence of the events. We show that, in all scenarios to which the original Lovasz local lemma applies, there exist resampling oracles, although they are not necessarily efficient. Nevertheless, for essentially all known applications of the Lovasz local lemma and its generalizations, we have designed efficient resampling oracles. As an application of these techniques, we present a new result on packings of rainbow spanning trees.
机译:Lovasz本地引理是概率组合学的一个精彩导致。它给出了概率空间的充分条件,以及存在同时避免所有事件的结果的事件的集合。几十年来,通过高效的算法找到这种结果一直是一个积极的研究主题。 Moser的突破性工作[Lovasz本地Lemma的建设性证据,在ACM国际计算理论上的诉讼程序中,2009年,PP。343-350]和Moser和Tardos [J. ACM,57(2010),11]介绍了一种主要的算法,其主要是由概率空间上的产品结构特征。在这项工作中,我们提出了一种更有效的算法,以获得更多的常规设置。我们的主要假设是存在某些函数,称为重新采样的oracles,可以调用以解决事件的不期望的发生。我们表明,在原始Lovasz本地引理的所有场景中,存在重新采样的oracles,尽管它们不一定有效。然而,对于基本上所有已知的Lovasz本地引理和概括的应用程序,我们设计了有效的重新采样的oracles。作为这些技术的应用,我们在彩虹跨越树的填料上提出了新的结果。

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