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复杂网络顶点可观测量的双变量时间序列中的多重分形交叉相关效应。

Multifractal cross-correlation effects in two-variable time series of complex network vertex observables.

作者信息

Oświȩcimka Paweł, Livi Lorenzo, Drożdż Stanisław

机构信息

Complex Systems Theory Department, Institute of Nuclear Physics, Polish Academy of Sciences, PL-31-342 Kraków, Poland.

Department of Computer Science, College of Engineering, Mathematics and Physical Sciences, University of Exeter, Exeter EX4 4QF, United Kingdom.

出版信息

Phys Rev E. 2016 Oct;94(4-1):042307. doi: 10.1103/PhysRevE.94.042307. Epub 2016 Oct 12.

Abstract

We investigate the scaling of the cross-correlations calculated for two-variable time series containing vertex properties in the context of complex networks. Time series of such observables are obtained by means of stationary, unbiased random walks. We consider three vertex properties that provide, respectively, short-, medium-, and long-range information regarding the topological role of vertices in a given network. In order to reveal the relation between these quantities, we applied the multifractal cross-correlation analysis technique, which provides information about the nonlinear effects in coupling of time series. We show that the considered network models are characterized by unique multifractal properties of the cross-correlation. In particular, it is possible to distinguish between Erdös-Rényi, Barabási-Albert, and Watts-Strogatz networks on the basis of fractal cross-correlation. Moreover, the analysis of protein contact networks reveals characteristics shared with both scale-free and small-world models.

摘要

我们研究了在复杂网络背景下,针对包含顶点属性的双变量时间序列所计算的互相关的标度。此类可观测量的时间序列通过平稳、无偏随机游走获得。我们考虑了三种顶点属性,它们分别提供了关于给定网络中顶点拓扑角色的短程、中程和远程信息。为了揭示这些量之间的关系,我们应用了多重分形互相关分析技术,该技术提供了有关时间序列耦合中非线性效应的信息。我们表明,所考虑的网络模型具有互相关的独特多重分形特性。特别是,可以基于分形互相关区分厄多斯 - 雷尼网络、巴拉巴西 - 阿尔伯特网络和瓦茨 - 斯托加茨网络。此外,蛋白质接触网络的分析揭示了与无标度模型和小世界模型共有的特征。

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