从平稳性到轻度非平稳性变化的顺序监测

Lajos Horváth, Zhenya Liu, Gregory Rice, Shixuan Wang
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引用次数: 16

摘要

我们开发和研究了顺序测试程序(la Chu等人,1996),用于在线检测时间序列从平稳到轻度非平稳的变化。所提出的测试基于顺序CUSUM和kpss型探测器过程,并被证明在广泛的变化点模型下提供一致的检测,包括ARMA和GARCH系列参数从模型平稳参数区域内的值到接近(收敛)平稳边界的值的变化。建立了局部渐近结果,给出了这些模型下检测时间的精确描述,这表明这些程序对于检测广泛的非平稳特征(包括平均值,波动率和单位根行为的变化)是强大的。通过模拟研究和应用于监测宏观经济生产系列的趋势和单位根行为的变化,以及检测标准普尔500股票市场指数的波动性变化,对所提出的方法进行了调查。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sequential Monitoring for Changes from Stationarity to Mild Non-stationarity
Abstract We develop and study sequential testing procedures a la Chu et al. (1996) for on-line detection of changes in a time series from stationarity to mild forms of non-stationarity. The proposed tests are based on sequential CUSUM and KPSS-type detector processes, and are shown to provide consistent detection under a wide range of change point models, including changes in the parameters of ARMA and GARCH series from values within the model’s stationarity parameter region to values close (converging) to the stationarity boundary. Local asymptotic results are established giving precise descriptions of the time to detection under several of these models, which show that such procedures are powerful to detect a wide range of non-stationary characteristics, including changes in mean, volatility, and unit root behaviour. The proposed methods are investigated by means of a simulation study and in applications to monitoring for changes in trend and unit root behaviour in macroeconomic production series, and to detect changes in volatility of the S&P-500 stock market index.
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