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Unit Roots in Time Series with Changepoints

机译:单位根系与变换点的时间序列

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Many financial time series are nonstationary and are modeled as ARIMA processes; they are integrated processes (I(n)) which can be made stationary (I(0)) via differencing n times. I(1) processes have a unit root in the autoregressive polynomial. Using OLS with unit root processes often leads to spurious results; a cointegration analysis should be used instead. Unit root tests (URT) decrease spurious cointegration. The Augmented Dickey Fuller (ADF) URT fails to reject a false null hypothesis of a unit root under the presence of structural changes in intercept and/or linear trend. The Zivot and Andrews (ZA) (1992) URT was designed for unknown breaks, but not under the null hypothesis. Lee and Strazicich (2003) argued the ZA URT was biased towards stationarity with breaks and proposed a new URT with breaks in the null. When an ARMA(p,q) process with trend and/or drift that is to be tested for unit roots and has changepoints in trend and/or intercept two approaches that can be taken: One approach is to use a unit root test that is robust to changepoints. In this paper we consider two of these URT's, the Lee-Strazicich URT and the Hybrid Bai-Perron ZA URT(Herranz, 2016.)? The other approach we consider is to remove the deterministic components with changepoints using the Bai-Perron breakpoint detection method (1998, 2003), and then use a standard unit root test such as ADF in each segment. This approach does not assume that the entire time series being tested is all I(1) or I(0), as is the case with standard unit root tests. Performances of the tests were compared under various scenarios involving changepoints via simulation studies.? Another type of model for breaks, the Self-Exciting-Threshold-Autoregressive (SETAR) model is also discussed.
机译:许多金融时间序列是非间平,并被建模为Arima流程;它们是集成的过程(I(n)),可以通过差异n次使静止的(i(0))制成。 I(1)过程在自回归多项式中具有单位根。使用单位根过程的OLS通常会导致杂散的结果;应使用协整分析。单位根测试(URT)减少虚假协整。在存在截距和/或线性趋势的结构变化的存在下,增强的Dickey Fumerer(ADF)URT无法拒绝单位根目录的假空假设。 Zivot和Andrews(ZA)(1992)王国设计用于未知的休息,但不属于零假设。李和斯特拉西奇(2003年)认为,ZA URT偏向于突破,并提出了一个新的ULT中休息。当ARMA(P,Q)处理具有用于单位根的趋势和/或漂移的趋势和/或漂移时,趋势和/或拦截可以采取的两种方法:一种方法是使用单位根测试强大的变换点。在本文中,我们考虑其中两个网址,李施泰罗斯骨头和混合白赛·Za Urt(Herranz,2016年)?我们考虑的另一种方法是使用Bai-Perron断点检测方法(1998,2003)使用ChangePoints删除确定性组件,然后在每个段中使用标准单元根测试如ADF。这种方法并不假设正在测试的整个时间序列是全部I(1)或I(0),就像标准单元根测试一样。通过仿真研究将测试的性能进行比较,涉及涉及变换点的各种场景。还讨论了另一种类型的破裂模型,还讨论了自我激发阈值 - 自回归(Setar)模型。

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