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Dense Percolation in Large-Scale Mean-Field Random Networks Is Provably “Explosive”

机译:大规模均场随机网络中的密集渗流被证明是“爆炸性的”

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摘要

Recent reports suggest that evolving large-scale networks exhibit “explosive percolation”: a large fraction of nodes suddenly becomes connected when sufficiently many links have formed in a network. This phase transition has been shown to be continuous (second-order) for most random network formation processes, including classical mean-field random networks and their modifications. We study a related yet different phenomenon referred to as dense percolation, which occurs when a network is already connected, but a large group of nodes must be dense enough, i.e., have at least a certain minimum required percentage of possible links, to form a “highly connected” cluster. Such clusters have been considered in various contexts, including the recently introduced network modularity principle in biological networks. We prove that, contrary to the traditionally defined percolation transition, dense percolation transition is discontinuous (first-order) under the classical mean-field network formation process (with no modifications); therefore, there is not only quantitative, but also qualitative difference between regular and dense percolation transitions. Moreover, the size of the largest dense (highly connected) cluster in a mean-field random network is explicitly characterized by rigorously proven tight asymptotic bounds, which turn out to naturally extend the previously derived formula for the size of the largest clique (a cluster with all possible links) in such a network. We also briefly discuss possible implications of the obtained mathematical results on studying first-order phase transitions in real-world linked systems.
机译:最近的报告表明,不断发展的大型网络表现出“爆炸性渗透”:当网络中形成足够多的链接时,很大一部分节点突然连接起来。对于大多数随机网络形成过程(包括经典均场随机网络及其修改)而言,这种相变已显示为连续的(二阶)。我们研究了一个相关的但又不同的现象,称为密集渗透,该现象在网络已经连接时发生,但是一大组节点必须足够密集,即至少具有一定最低限度的可能链路百分比,才能形成一个“高度连接”的集群。已经在各种情况下考虑了这样的集群,包括最近在生物网络中引入的网络模块化原理。我们证明,与传统上定义的渗流跃迁相反,稠密的渗流跃迁在经典均场网络形成过程中(不做任何修改)是不连续的(一阶)。因此,规则渗滤转变和密集渗滤转变之间不仅存在定量差异,而且存在定性差异。此外,均场随机网络中最大的密集(高度连接)簇的大小通过严格证明的紧渐近边界来明确表征,结果证明自然地扩展了先前得出的最大团簇(簇)的公式包含所有可能的链接)。我们还简要讨论了所获得的数学结果对研究现实世界中链接系统中的一阶相变的可能含义。

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