通过局部极限实现贪婪的最大独立集

Michael Krivelevich, Tamás Mészáros, Peleg Michaeli, Clara Shikhelman
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引用次数: 0

摘要

在图中寻找最大独立集的随机贪婪算法通过以随机顺序检查图的顶点来构建最大独立集,如果当前顶点与之前添加的顶点不相邻,则将其添加到独立集中。在本文中,我们提出了一个通用框架,通过使用局部收敛的概念来计算(可能是随机的)图序列的随机贪婪独立集的渐近密度。我们利用这个框架对以前研究过的图族(如路径和二项式随机图)的结果进行了直接证明,并对新的图族(如随机树和稀疏随机平面图)进行了研究。最后,我们将更仔细地分析基图为树时的随机贪婪算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Greedy maximal independent sets via local limits
The random greedy algorithm for finding a maximal independent set in a graph constructs a maximal independent set by inspecting the graph's vertices in a random order, adding the current vertex to the independent set if it is not adjacent to any previously added vertex. In this paper, we present a general framework for computing the asymptotic density of the random greedy independent set for sequences of (possibly random) graphs by employing a notion of local convergence. We use this framework to give straightforward proofs for results on previously studied families of graphs, like paths and binomial random graphs, and to study new ones, like random trees and sparse random planar graphs. We conclude by analysing the random greedy algorithm more closely when the base graph is a tree.
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