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Self-similarity research of stock networks

机译:股票网络的自相似性研究

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摘要

Complex network theory is a new approach to analysis stock problems. In this paper, the network is constructed as the following way: each stock is treated as node and the correlations of stock prices’ fluctuation represent edges. After a suitable threshold is chosen, an adjacency metric is obtained. Based on the theories and methodology of complex networks, we discuss the degree distribution, average path length and clustering coefficient of the stock market network and the results show that the network exhibits small world effect and scale-free property. Furthermore, another important property—self-similarity has been found with the following two methods: one is quantitatively analyzing nodes degree distribution with R/S theory to get the Hurst index of degree, the other is qualitatively analyzing and comparing volume dimension by average path length and clustering coefficient of network with Box Covering method.
机译:复杂网络理论是一种分析库存问题的新方法。在本文中,网络的构建方式如下:将每只股票视为节点,股票价格波动的相关性代表边。在选择合适的阈值之后,获得邻接度量。基于复杂网络的理论和方法,讨论了股票网络的度分布,平均路径长度和聚类系数,结果表明该网络具有较小的世界效应和无尺度性质。此外,另一个重要的属性-自相似性是通过以下两种方法发现的:一种是使用R / S理论定量分析节点的度分布以获得赫斯特度指数,另一种是通过平均路径定性分析和比较体积尺寸Box Covering方法的网络长度和聚类系数

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