多变量变异性的鲁棒非参数多变化点检测

IF 2 Q2 ECONOMICS Econometrics and Statistics Pub Date : 2023-10-01 DOI:10.1016/j.ecosta.2023.09.001
Kelly Ramsay, Shojaeddin Chenouri
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引用次数: 0

摘要

介绍了两种鲁棒的非参数多变点检测算法:DWBS和MKWP。这些算法可以检测到一系列独立的多变量观测的可变性中的多个变化,即使在变化点的数量未知的情况下也是如此。DWBS和MKWP算法需要最小的分布假设,并且对外围观测值和重尾具有鲁棒性。DWBS算法采用基于深度的秩和野二值分割的局部搜索方法。MKWP算法通过最大化经典Kruskal-Wallis ANOVA检验统计量的惩罚版本来全局估计变化点。结果表明,该目标函数可以通过著名的PELT算法实现最大化。在温和的非参数假设下,这两种算法对于变化点的正确数量和变化点的正确位置都是一致的。介绍了一种基于Schwartz信息准则的多变量数据的数据驱动阈值分割方法。通过仿真研究证明了新方法的鲁棒性和准确性,并将算法与几种现有算法进行了比较。这些新方法可以在数据重尾或偏态且样本量较大的情况下准确地估计出变化点的数量和位置。最后,将提出的算法应用于欧洲股票日收益的四维序列。
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Robust nonparametric multiple changepoint detection for multivariate variability
Two robust, nonparametric multiple changepoint detection algorithms are introduced: DWBS and MKWP. These algorithms can detect multiple changes in the variability of a sequence of independent multivariate observations, even when the number of changepoints is unknown. The algorithms DWBS and MKWP require minimal distributional assumptions and are robust to outlying observations and heavy tails. The DWBS algorithm uses a local search method based on depth-based ranks and wild binary segmentation. The MKWP algorithm estimates changepoints globally via maximizing a penalized version of the classical Kruskal–Wallis ANOVA test statistic. It is demonstrated that this objective function can be maximized via the well-known PELT algorithm. Under mild, nonparametric assumptions, both of these algorithms are shown to be consistent for the correct number of changepoints and the correct location(s) of the changepoint(s). A data driven thresholding method for multivariate data is introduced, based on the Schwartz information criteria. The robustness and accuracy of the new methods is demonstrated with a simulation study, where the algorithms are compared to several existing algorithms. These new methods can estimate the number of changepoints and their locations accurately when the data are heavy tailed or skewed and the sample size is large. Lastly, the proposed algorithms are applied to a four-dimensional sequence of European daily stock returns.
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来源期刊
CiteScore
3.10
自引率
10.50%
发文量
84
期刊介绍: Econometrics and Statistics is the official journal of the networks Computational and Financial Econometrics and Computational and Methodological Statistics. It publishes research papers in all aspects of econometrics and statistics and comprises of the two sections Part A: Econometrics and Part B: Statistics.
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