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Phase synchronization based minimum spanning trees for analysis of financial time series with nonlinear correlations

机译:基于相位同步的最小生成树,用于分析具有非线性相关性的金融时间序列

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The cross correlation coefficient has been widely applied in financial time series analysis, in specific, for understanding chaotic behaviour in terms of stock price and index movements during crisis periods. To better understand time series correlation dynamics, the cross correlation matrices are represented as networks, in which a node stands for an individual time series and a link indicates cross correlation between a pair of nodes. These networks are converted into simpler trees using different schemes. In this context, Minimum Spanning Trees (MST) are the most favoured tree structures because of their ability to preserve all the nodes and thereby retain essential information imbued in the network. Although cross correlations underlying MSTs capture essential information, they do not faithfully capture dynamic behaviour embedded in the time series data of financial systems because cross correlation is a reliable measure only if the relationship between the time series is linear. To address the issue, this work investigates a new measure called phase synchronization (PS) for establishing correlations among different time series which relate to one another, linearly or nonlinearly. In this approach the strength of a link between a pair of time series (nodes) is determined by the level of phase synchronization between them. We compare the performance of phase synchronization based MST with cross correlation based MST along selected network measures across temporal frame that includes economically good and crisis periods. We observe agreement in the directionality of the results across these two methods. They show similar trends, upward or downward, when comparing selected network measures. Though both the methods give similar trends, the phase synchronization based MST is a more reliable representation of the dynamic behaviour of financial systems than the Cross correlation based MST because of the former's ability to quantify nonlinear relationships among time series or relations among phase shifted time series. (C) 2015 Elsevier B.V. All rights reserved.
机译:互相关系数已广泛应用于金融时间序列分析中,尤其是用于了解危机时期股价和指数变动方面的混沌行为。为了更好地理解时间序列相关动力学,将互相关矩阵表示为网络,其中一个节点代表一个单独的时间序列,一个链接指示一对节点之间的互相关。使用不同的方案将这些网络转换为更简单的树。在这种情况下,最小生成树(MST)是最受青睐的树形结构,因为它们能够保留所有节点,从而保留网络中注入的基本信息。尽管基于MST的互相关可以捕获基本信息,但它们不能如实地捕获嵌入在金融系统时间序列数据中的动态行为,因为仅当时间序列之间的关系为线性时,互相关才是可靠的度量。为了解决这个问题,这项工作研究了一种称为相位同步(PS)的新措施,用于建立彼此线性或非线性相关的不同时间序列之间的相关性。在这种方法中,一对时间序列(节点)之间的链接强度取决于它们之间的相位同步程度。我们比较了基于时间同步的MST和基于互相关的MST的性能,这些跨时间跨包括经济状况良好和危机时期在内的时间范围内选定的网络度量。我们观察到这两种方法的结果在方向性上的一致性。当比较选定的网络度量时,它们显示出相似的趋势,向上或向下。尽管两种方法都具有相似的趋势,但是基于相位同步的MST比基于交叉相关的MST更能可靠地表示金融系统的动态行为,因为前者具有量化时间序列之间的非线性关系或相移时间序列之间的关系的能力。 。 (C)2015 Elsevier B.V.保留所有权利。

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