论文标题

基于经验分布函数的多元时间序列的非参数顺序更改点检测

Nonparametric sequential change-point detection for multivariate time series based on empirical distribution functions

论文作者

Kojadinovic, Ivan, Verdier, Ghislain

论文摘要

顺序更改点检测的目的是在认为被监视观测值的某些概率特性发生变化时发出警报。这项工作涉及基于经验分布函数的差异的非参数,闭结端测试程序,这些函数的差异旨在对多变量时间序列的固定分布的变化特别敏感。所提出的检测器是后验(离线)更改点测试中使用的统计数据的适应,并涉及加权,从而使最近观察结果更为重要。通过将检测器与通过重新采样估计的阈值函数进行比较,以使误报的概率在监视期间保持大约恒定的概率来执行所得的顺序更改点检测过程。说明了估计阈值函数的渐近有效性的一般结果。作为推论,当使用依赖性的乘数自举进行多变量时间序列进行时,证明了基于经验分布函数的顺序测试的渐近有效性。大规模的蒙特卡洛实验证明了所得过程的良好有限样本特性。在财务数据上说明了派生的顺序测试的应用。

The aim of sequential change-point detection is to issue an alarm when it is thought that certain probabilistic properties of the monitored observations have changed. This work is concerned with nonparametric, closed-end testing procedures based on differences of empirical distribution functions that are designed to be particularly sensitive to changes in the comtemporary distribution of multivariate time series. The proposed detectors are adaptations of statistics used in a posteriori (offline) change-point testing and involve a weighting allowing to give more importance to recent observations. The resulting sequential change-point detection procedures are carried out by comparing the detectors to threshold functions estimated through resampling such that the probability of false alarm remains approximately constant over the monitoring period. A generic result on the asymptotic validity of such a way of estimating a threshold function is stated. As a corollary, the asymptotic validity of the studied sequential tests based on empirical distribution functions is proven when these are carried out using a dependent multiplier bootstrap for multivariate time series. Large-scale Monte Carlo experiments demonstrate the good finite-sample properties of the resulting procedures. The application of the derived sequential tests is illustrated on financial data.

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