在趋势可能突破和非平稳波动的情况下对单位根的检验

Giuseppe Cavaliere, David I. Harvey, S. Leybourne, A. Taylor
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引用次数: 22

摘要

在本文中,我们分析了非平稳波动对最近开发的单位根检验的影响,该检验允许在样本中未知点发生可能的趋势中断,Harris, Harvey, Leybourne和Taylor (2008) [HHLT]考虑了这一点。HHLT的分析依赖于一个新的断裂分数估计量,当出现断裂趋势时,该估计量与速率为Op(T??1)的真实断裂分数一致。然而,与其他可用的估计量不同,当没有趋势中断时,HHLT的估计量以速率Op(T1=2)收敛于零。在他们的分析中,HHLT假设冲击遵循由IID创新驱动的线性过程。我们的第一个贡献是表明HHLT的中断分数估计器保留了与HHLT在IID情况下所证明的相同的一致性属性,当创新显示出相当一般形式的非平稳行为时,包括,例如,创新波动性中的单个中断的情况,该情况可能会或可能不会与趋势中断同时发生。然而,正如我们随后证明的那样,在存在非平稳波动时,基于该估计量的单位根统计量的极限零分布不是关键的。相关的蒙特卡罗证据提出了量化的影响,各种模型的非平稳波动对这类测试的渐近和有限的样本行为。然后,通过使用来自原始样本数据的趋势中断估计器,考虑基于野生引导的HHLT测试实现,提供了识别推理问题的解决方案。所提出的自举方法不需要从业者为波动率指定参数模型,并且在实践中跨一系列模型表现得非常好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Testing for Unit Roots in the Presence of a Possible Break in Trend and Non-Stationary Volatility
In this paper we analyse the impact of non-stationary volatility on the recently developed unit root tests which allow for a possible break in trend occurring at an unknown point in the sample, considered in Harris, Harvey, Leybourne and Taylor (2008) [HHLT]. HHLT's analysis hinges on a new break fraction estimator which, when a break in trend occurs, is consistent for the true break fraction at rate Op(T??1). Unlike other available estimators, however, when there is no trend break HHLT's estimator converges to zero at rate Op(T1=2). In their analysis HHLT assume the shocks to follow a linear process driven by IID innovations. Our first contribution is to show that HHLT's break fraction estimator retains the same consistency properties as demonstrated by HHLT for the IID case when the innovations display non-stationary behaviour of a quite general form, including, for example, the case of a single break in the volatility of the innovations which may or may not occur at the same time as a break in trend. However, as we subsequently demonstrate, the limiting null distribution of unit root statistics based around this estimator are not pivotal in the presence of non-stationary volatility. Associated Monte Carlo evidence is presented to quantify the impact of various models of non-stationary volatility on both the asymptotic and finite sample behaviour of such tests. A solution to the identified inference problem is then provided by considering wild bootstrap-based implementations of the HHLT tests, using the trend break estimator from the original sample data. The proposed bootstrap method does not require the practitioner to specify a parametric model for volatility, and is shown to perform very well in practice across a range of models.
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