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Cross over of recurrence networks to random graphs and random geometric graphs

机译:将递归网络转换为随机图和随机几何图

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Recurrence networks are complex networks constructed from the time series of chaotic dynamical systems where the connection between two nodes is limited by the recurrence threshold. This condition makes the topology of every recurrence network unique with the degree distribution determined by the probability densityvariations of the representative attractor from which it is constructed. Here we numerically investigate the properties of recurrence networks from standard low-dimensional chaotic attractors using some basic network measuresand show how the recurrence networks are different from random and scale-free networks. In particular, we show that all recurrence networks can cross over to random geometric graphs by adding sufficient amount of noise tothe time series and into the classical random graphs by increasing the range of interaction to the system size. We also highlight the effectiveness of a combined plot of characteristic path length and clustering coefficient in capturing the small changes in the network characteristics.
机译:递归网络是由混沌动力学系统的时间序列构建的复杂网络,其中两个节点之间的连接受递归阈值限制。这种条件使得每个递归网络的拓扑结构都具有唯一性,其程度分布由构造它的代表性吸引子的概率密度变化确定。在这里,我们使用一些基本的网络方法对标准低维混沌吸引子的递归网络的性质进行了数值研究,并展示了递归网络与随机和无标度网络的区别。特别地,我们表明,通过向时间序列添加足够量的噪声,所有递归网络都可以跨越随机几何图,而通过增加与系统大小的交互范围,则可以回归到经典随机图。我们还强调了特征路径长度和聚类系数的组合图在捕获网络特征的细微变化中的有效性。

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