Power of Unit Root Tests Against Nonlinear and Noncausal Alternatives with an Application to the Brent Crude Oil Price

Frédérique Bec, Alain Guay, Heino Bohn Nielsen, Sarra Saïdi
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Abstract

The increasing sophistication of economic and financial time series modelling creates a need for a test of the time dependence structure of the series which does not require a proper specification of the alternative. Indeed, the latter is unknown beforehand. Yet, the stationarity has to be established before proceeding to the estimation and testing of causal/noncausal or linear/nonlinear models as their econometric theory has been developed under the maintained assumption of stationarity. In this paper, we propose a new unit root test statistics which is both asymptotically consistent against all stationary alternatives and still keeps good power properties in finite sample. A large simulation study is performed to assess the power of our test compared to existing unit root tests built specifically for various kinds of stationary alternatives, when the true DGP is either causal or noncausal, linear or nonlinear stationary. Based on various sample sizes and degrees of persistence, it turns out that our new test performs very well in terms of power in finite sample, no matter the alternative under consideration. The proposed approach is illustrated using recent Brent crude oil price data.
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以布伦特原油价格为例:非线性和非因果替代方法的单位根检验功率
随着经济和金融时间序列建模的日益复杂,需要对序列的时间依赖结构进行检验,而这并不需要对替代变量进行适当的规范。事实上,后者是事先未知的。然而,在对因果/非因果或线性/非线性模型进行估计和检验之前,必须先确定静止性,因为其计量经济学理论是在坚持静止性假设的基础上发展起来的。在本文中,我们提出了一种新的单位根检验统计量,这种统计量既能与所有静态替代变量保持渐近一致,又能在有限样本中保持良好的幂特性。本文进行了大规模的模拟研究,以评估与现有的专门针对各种静态替代方案的单位根检验相比,当真实的 DGP 是因果或非因果、线性或非线性静态时,我们的检验的功率。根据不同的样本大小和持续程度,我们的新检验方法在有限样本中的功率表现非常好,无论考虑的是哪种替代方法。我们使用最近的布伦特原油价格数据对所提出的方法进行了说明。
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