带协变量的单位根检验的Bootstrap方法

Bootstrapping unit root tests with covariates

Econometric Reviews · 2015
被引 22
人大 A-ABS 3

中文导读

研究了带协变量的增广Dickey-Fuller单位根检验的Bootstrap方法,通过参数Bootstrap获取临界值,解决了原检验依赖未知参数的问题,模拟显示该方法能显著提高检验的准确性和功效。

Abstract

We consider the bootstrap method for the covariates augmented Dickey–Fuller (CADF) unit root test suggested in Hansen (1995 Hansen, B. E. (1995). Rethinking the univariate approach to unit root testing: Using covariates to increase power. \ Econometric Theory 11:1148–1171.[Crossref], [Web of Science ®] , [Google Scholar]) which uses related variables to improve the power of univariate unit root tests. It is shown that there are substantial power gains from including correlated covariates. The limit distribution of the CADF test, however, depends on the nuisance parameter that represents the correlation between the equation error and the covariates. Hence, inference based directly on the CADF test is not possible. To provide a valid inferential basis for the CADF test, we propose to use the parametric bootstrap procedure to obtain critical values, and establish the asymptotic validity of the bootstrap CADF test. Simulations show that the bootstrap CADF test significantly improves the asymptotic and the finite sample size performances of the CADF test, especially when the covariates are highly correlated with the error. Indeed, the bootstrap CADF test offers drastic power gains over the conventional unit root tests. Our testing procedures are applied to the extended Nelson and Plosser data set.

Bootstrap方法协变量增广DF检验单位根检验检验功效