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Measure for degree heterogeneity in complex networks and its application to recurrence network analysis

机译:复杂网络度异质性度量及其在递归网络分析中的应用

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摘要

We propose a novel measure of degree heterogeneity, for unweighted and undirected complex networks, which requires only the degree distribution of the network for its computation. We show that the proposed measure can be applied to all types of network topology with ease and increases with the diversity of node degrees in the network. The measure is applied to compute the heterogeneity of synthetic (both random and scale free (SF)) and real-world networks with its value normalized in the interval [0, 1]. To define the measure, we introduce a limiting network whose heterogeneity can be expressed analytically with the value tending to 1 as the size of the network N tends to infinity. We numerically study the variation of heterogeneity for random graphs (as a function of p and N) and for SF networks with γ and N as variables. Finally, as a specific application, we show that the proposed measure can be used to compare the heterogeneity of recurrence networks constructed from the time series of several low-dimensional chaotic attractors, thereby providing a single index to compare the structural complexity of chaotic attractors.
机译:对于非加权和无向复杂网络,我们提出了一种新的度异质性度量,该度量仅需要网络的度分布即可进行计算。我们表明,所提出的措施可以轻松地应用于所有类型的网络拓扑,并且随着网络中节点度的多样性而增加。该度量用于计算合成网络(随机和无标度(SF))与现实网络的异质性,其值在[0,1]区间内归一化。为了定义度量,我们引入了一个限制网络,该网络的解析度可以通过网络N的大小趋于无穷大而趋于1来表示。我们通过数值研究随机图(作为p和N的函数)和以γ和N为变量的SF网络的异质性变化。最后,作为一个特定的应用,我们表明所提出的措施可以用来比较由几个低维混沌吸引子的时间序列构成的递归网络的异质性,从而提供一个单一的指标来比较混沌吸引子的结构复杂性。

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