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Improving Entropy Estimates of Complex Network Topology for the Characterization of Coupling in Dynamical Systems

机译:改进复杂网络拓扑的熵估计以表征动力系统中的耦合

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摘要

A new measure for the characterization of interconnected dynamical systems coupling is proposed. The method is based on the representation of time series as weighted cross-visibility networks. The weights are introduced as the metric distance between connected nodes. The structure of the networks, depending on the coupling strength, is quantified via the entropy of the weighted adjacency matrix. The method has been tested on several coupled model systems with different individual properties. The results show that the proposed measure is able to distinguish the degree of coupling of the studied dynamical systems. The original use of the geodesic distance on Gaussian manifolds as a metric distance, which is able to take into account the noise inherently superimposed on the experimental data, provides significantly better results in the calculation of the entropy, improving the reliability of the coupling estimates. The application to the interaction between the El Ni?o Southern Oscillation (ENSO) and the Indian Ocean Dipole and to the influence of ENSO on influenza pandemic occurrence illustrates the potential of the method for real-life problems.
机译:提出了一种表征互连动力学系统耦合的新方法。该方法基于将时间序列表示为加权的交叉可见性网络。权重作为连接节点之间的度量距离引入。网络的结构取决于耦合强度,通过加权邻接矩阵的熵来量化。该方法已经在具有不同个体属性的几个耦合模型系统上进行了测试。结果表明,所提出的措施能够区分所研究动力系统的耦合程度。高斯流形上的测地距离最初用作度量距离,它能够考虑固有地叠加在实验数据上的噪声,在熵的计算中提供了明显更好的结果,从而提高了耦合估计的可靠性。厄尔尼诺南方涛动(ENSO)与印度洋偶极子之间的相互作用以及ENSO对流感大流行发生的影响的应用说明了该方法解决现实生活中问题的潜力。

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