Nonparametric Multiple Change Point Analysis of the Global Financial Crisis

D. Allen, M. McAleer, R. Powell, Abhay Kumar-Singh
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引用次数: 9

Abstract

This paper presents an application of a recently developed approach by Matteson and James (2012) for the analysis of change points in a data set, namely major financial market indices converted to financial return series. The general problem concerns the inference of a change in the distribution of a set of time-ordered variables. The approach involves the nonparametric estimation of both the number of change points and the positions at which they occur. The approach is general and does not involve assumptions about the nature of the distributions involved or the type of change beyond the assumption of the existence of the absolute moment, for some 2 (0; 2). The estimation procedure is based on hierarchical clustering and the application of both divisive and agglomerative algorithms. The method is used to evaluate the impact of the Global Financial Crisis (GFC) on the US, French, German, UK, Japanese and Chinese markets, as represented by the S&P500, CAC, DAX, FTSE All Share, Nikkei 225 and Shanghai A share Indices, respectively, from 2003 to 2013. The approach is used to explore the timing and number of change points in the datasets corresponding to the GFC and subsequent European Debt Crisis.
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全球金融危机的非参数多变化点分析
本文介绍了mattson和James(2012)最近开发的一种方法的应用,用于分析数据集中的变化点,即主要金融市场指数转换为金融回报序列。一般问题涉及对一组时间有序变量的分布变化的推断。该方法包括对变化点的数量和它们发生的位置进行非参数估计。这种方法是一般性的,不涉及对所涉及的分布的性质或超出绝对矩存在的假设之外的变化类型的假设,对于大约2 (0;2)估计过程基于分层聚类,并应用了分裂和聚类算法。该方法用于评估2003年至2013年全球金融危机对美国、法国、德国、英国、日本和中国市场的影响,分别以标准普尔500指数、CAC指数、DAX指数、富时全股指数、日经225指数和上海A股指数为代表。该方法用于探索与全球金融危机和随后的欧洲债务危机相对应的数据集中变化点的时间和数量。
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