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首页> 外文期刊>Journal of Econometrics >Robust methods for detecting multiple level breaks in autocorrelated time series
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Robust methods for detecting multiple level breaks in autocorrelated time series

机译:检测自相关时间序列中多个电平中断的鲁棒方法

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In this paper we propose tests for the null hypothesis that a time series process displays a constant level against the alternative that it displays (possibly) multiple changes in level. Our proposed tests are based on functions of appropriately standardized sequences of the differences between sub-sample mean estimates from the series under investigation. The tests we propose differ notably from extant tests for level breaks in the literature in that they are designed to be robust as to whether theprocess admits an autoregressive unit root (the data are /(1))or stable autoregressive roots (the data are / (0)). We derive the asymptotic null distributions of our proposed tests, along with representations for their asymptotic local power functions against Pitman drift alternatives under both 1(0) and J(l) environments. Associated estimators of the level break fractions are also discussed. We initially outline our procedure through the case of non-trending series, but our analysis is subsequently extended to allow for series which display an underlying linear trend, in addition to possible level breaks. Monte Carlo simulation results are presented which suggest that the proposed tests perform well in small samples, showing good size control under the null, regardless of the order of integration of the data, and displaying very decent power when level breaks occur.
机译:在本文中,我们提出了针对零假设的检验,该零假设是一个时间序列过程显示一个恒定的水平,而不是它显示(可能)显示多个水平变化的选择。我们提出的测试是基于被调查系列的子样本均值估计之间的差异的适当标准化序列的功能。我们建议的测试与文献中针对级别中断的现有测试显着不同,因为它们旨在针对过程是否接受自回归单位根(数据为/(1))还是稳定的自回归根(数据为/ (0))。我们导出了我们提出的测试的渐近零分布,以及它们在1(0)和J(l)环境下针对Pitman漂移备选方案的渐近局部幂函数的表示形式。还讨论了电平中断分数的相关估计量。我们最初通过非趋势序列的情况来概述我们的程序,但是随后我们的分析得到扩展,以允许除了可能的水平突破之外,序列还显示潜在的线性趋势。给出的蒙特卡罗仿真结果表明,所提出的测试在小样本中表现良好,无论数据的积分顺序如何,在零值下均显示出良好的尺寸控制,并且在出现电平中断时显示出非常好的功率。

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