Horizontal visibility graphs transformed from fractional Brownian motions: Topological properties versus Hurst index
Wen-Jie Xie, Wei-Xing Zhou

TL;DR
This study investigates how the topological properties of horizontal visibility graphs derived from fractional Brownian motions vary with the Hurst index, revealing fractality, assortativity, and specific scaling behaviors.
Contribution
It provides a detailed analysis of the relationship between Hurst index and network topological features in horizontal visibility graphs from fractional Brownian motions.
Findings
Clustering coefficient decreases with increasing Hurst index.
Mean shortest path length increases exponentially with Hurst index.
Horizontal visibility graphs are fractal and exhibit assortativity.
Abstract
Nonlinear time series analysis aims at understanding the dynamics of stochastic or chaotic processes. In recent years, quite a few methods have been proposed to transform a single time series to a complex network so that the dynamics of the process can be understood by investigating the topological properties of the network. We study the topological properties of horizontal visibility graphs constructed from fractional Brownian motions with different Hurst index . Special attention has been paid to the impact of Hurst index on the topological properties. It is found that the clustering coefficient decreases when increases. We also found that the mean length of the shortest paths increases exponentially with for fixed length of the original time series. In addition, increases linearly with respect to when is close to 1 and in a logarithmic form…
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