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Complex Networks Renormalization: Flows and Fixed Points

机译:复杂网络的重新规范化:流和不动点

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摘要

Recently, it has been claimed that some complex networks are self-similar under a convenient re-normalization procedure. We present a general method to study renormalization flows in graphs. We find that the behavior of some variables under renormalization, such as the maximum number of connections of a node, obeys simple scaling laws, characterized by critical exponents. This is true for any class of graphs, from random to scale-free networks, from lattices to hierarchical graphs. Therefore, renormalization flows for graphs are similar as in the renormalization of spin systems. An analysis of classic renormalization for percolation and the Ising model on the lattice confirms this analogy. Critical exponents and scaling functions can be used to classify graphs in universality classes, and to uncover similarities between graphs that are inaccessible to a standard analysis.
机译:近来,已经声称一些复杂的网络在便利的重新归一化程序下是自相似的。我们提出了一种通用的方法来研究图中的重归一化流。我们发现,某些变量在重新规范化下的行为(例如,节点的最大连接数)服从简单的缩放定律,其特征是关键指数。从随机网络到无标度网络,从网格到层次图,任何类型的图都是如此。因此,图的重归一化流程与自旋系统的重归一化相似。对渗流的经典重归一化和晶格上的Ising模型的分析证实了这一类比。关键指数和缩放函数可用于在通用性类中对图形进行分类,并揭示标准分析无法访问的图形之间的相似性。

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