动态因子面板中单位根的检验

H. Moon, B. Perron
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引用次数: 1016

摘要

本文研究了截面单元相关的大n、大T板的单位根检验问题。为了对这种横截面相关性进行建模,我们假设数据是由未知数量的不可观察的共同因素产生的。我们在这种环境下提出了单位根检验,并在单位根和局部替代的零假设下推导了它们的(高斯)渐近分布。我们证明,当模型没有附带趋势时,这些检验具有显著的渐近能力。然而,当模型中存在偶然趋势并且有必要去除异质确定性成分时,我们表明这些测试对相同的局部替代方案无效。通过蒙特卡罗模拟,我们为这些新测试的有限样本特性提供了证据。
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 a Unit Root in Panels with Dynamic Factors
This paper studies testing for a unit root for large n and T panels in which the cross-sectional units are correlated. To model this cross-sectional correlation, we assume that the data is generated by an unknown number of unobservable common factors. We propose unit root tests in this environment and derive their (Gaussian) asymptotic distribution under the null hypothesis of a unit root and local alternatives. We show that these tests have significant asymptotic power when the model has no incidental trends. However, when there are incidental trends in the model and it is necessary to remove heterogeneous deterministic components, we show that these tests have no power against the same local alternatives. Through Monte Carlo simulations, we provide evidence on the finite sample properties of these new tests.
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