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Change-point methods for multivariate time-series: paired vectorial observations

机译:多变量时间序列的变化点方法:配对矢量观测

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We consider paired and two-sample break-detection procedures for vectorial observations and multivariate time series. The new methods involve L2-type criteria based on empirical characteristic functions and are easy to compute regardless of dimension. We obtain asymptotic results that allow for application of the methods to a wide range of settings involving on-line as well as retrospective circumstances with dependence between the two time series as well as with dependence within each series. In the ensuing Monte Carlo study the new detection methods are implemented by means of resampling procedures which are properly adapted to the type of data at hand, be it independent or paired, autoregressive or GARCH structured, medium or heavy-tailed. The new methods are also applied on a real dataset from the financial sector over a time period which includes the Brexit referendum.
机译:我们考虑用于矢量观测和多变量时间序列的配对和两个样本的断裂检测程序。 新方法涉及基于经验特性功能的L2型标准,并且易于计算无论维度如何。 我们获得了渐近结果,允许将方法应用于涉及在线的各种设置以及依赖于两次序列以及在每个系列内的依赖关系的回顾情况。 在随后的Monte Carlo研究中,新的检测方法通过重新采样程序来实现,该方法是适当适应于手头的数据类型,无论是独立的还是配对,自回归或加入结构化,中等或重尾。 新方法也在金融部门的实际数据集上应用于包括Brexit公民投票的时间段。

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