Liu Jin-Long, Yu Zu-Guo, Anh Vo
Hunan Key Laboratory for Computation and Simulation in Science and Engineering and Key Laboratory of Intelligent Computing and Information Processing of Ministry of Education, Xiangtan University, Xiangtan, Hunan 411105, China.
Hunan Key Laboratory for Computation and Simulation in Science and Engineering and Key Laboratory of Intelligent Computing and Information Processing of Ministry of Education, Xiangtan University, Xiangtan, Hunan 411105, China and School of Mathematical Sciences, Queensland University of Technology, GPO Box 2434, Brisbane, Q4001, Australia.
Phys Rev E Stat Nonlin Soft Matter Phys. 2014 Mar;89(3):032814. doi: 10.1103/PhysRevE.89.032814. Epub 2014 Mar 31.
Many studies have shown that we can gain additional information on time series by investigating their accompanying complex networks. In this work, we investigate the fundamental topological and fractal properties of recurrence networks constructed from fractional Brownian motions (FBMs). First, our results indicate that the constructed recurrence networks have exponential degree distributions; the average degree exponent 〈λ〉 increases first and then decreases with the increase of Hurst index H of the associated FBMs; the relationship between H and 〈λ〉 can be represented by a cubic polynomial function. We next focus on the motif rank distribution of recurrence networks, so that we can better understand networks at the local structure level. We find the interesting superfamily phenomenon, i.e., the recurrence networks with the same motif rank pattern being grouped into two superfamilies. Last, we numerically analyze the fractal and multifractal properties of recurrence networks. We find that the average fractal dimension 〈dB〉 of recurrence networks decreases with the Hurst index H of the associated FBMs, and their dependence approximately satisfies the linear formula 〈dB〉≈2-H, which means that the fractal dimension of the associated recurrence network is close to that of the graph of the FBM. Moreover, our numerical results of multifractal analysis show that the multifractality exists in these recurrence networks, and the multifractality of these networks becomes stronger at first and then weaker when the Hurst index of the associated time series becomes larger from 0.4 to 0.95. In particular, the recurrence network with the Hurst index H=0.5 possesses the strongest multifractality. In addition, the dependence relationships of the average information dimension 〈D(1)〉 and the average correlation dimension 〈D(2)〉 on the Hurst index H can also be fitted well with linear functions. Our results strongly suggest that the recurrence network inherits the basic characteristic and the fractal nature of the associated FBM series.
许多研究表明,通过研究时间序列所伴随的复杂网络,我们可以获得关于时间序列的额外信息。在这项工作中,我们研究了由分数布朗运动(FBM)构建的递归网络的基本拓扑和分形性质。首先,我们的结果表明,所构建的递归网络具有指数度分布;平均度指数〈λ〉随着相关FBM的赫斯特指数H的增加先增大后减小;H与〈λ〉之间的关系可以用三次多项式函数表示。接下来,我们关注递归网络的基序秩分布,以便能在局部结构层面更好地理解网络。我们发现了有趣的超家族现象,即具有相同基序秩模式的递归网络被归为两个超家族。最后,我们对递归网络的分形和多重分形性质进行了数值分析。我们发现递归网络的平均分形维数〈dB〉随着相关FBM的赫斯特指数H的增大而减小,并且它们的依赖关系大致满足线性公式〈dB〉≈2 - H,这意味着相关递归网络的分形维数接近于FBM的图形的分形维数。此外,我们的多重分形分析的数值结果表明,这些递归网络存在多重分形性,并且当相关时间序列的赫斯特指数从0.4增大到0.95时,这些网络的多重分形性先变强后变弱。特别地,赫斯特指数H = 0.5的递归网络具有最强的多重分形性。此外,平均信息维数〈D(1)〉和平均关联维数〈D(2)〉与赫斯特指数H的依赖关系也可以用线性函数很好地拟合。我们的结果有力地表明,递归网络继承了相关FBM序列的基本特征和分形性质。