存在序列相关时的趋势函数假设检验

Trend Function Hypothesis Testing in the Presence of Serial Correlation

Econometrica · 1998
被引 319
人大 A+FT50ABS 4*

中文导读

提出检验单变量时间序列确定性趋势函数参数的统计量,允许误差存在一般形式的序列相关,无需估计序列相关参数,适用于I(0)和I(1)误差,并允许趋势函数存在已知或未知位置的断点。

Abstract

In this paper test statistics are proposed that can be used to test hypotheses about the parameters of the deterministic trend function of a univariate time series. The tests are valid in the presence of general forms of serial correlation in the errors and can be used without having to estimate the serial correlation parameters either parametrically or nonparametrically. The tests are valid for I(0) and I(1) errors. Trend functions that are permitted include general linear polynomial trend functions that may have breaks at either known or unknown locations. Asymptotic distributions are derived, and consistency of the tests is established. The general results are applied to a model with a simple linear trend. A local asymptotic analysis is used to compute asymptotic size and power of the tests for this example. Size is well controlled and is relatively unaffected by the variance of the initial condition. Asymptotic power curves are computed for the simple linear trend model and are compared to existing tests. It is shown that the new tests have nontrivial asymptotic power. A simulation study shows that the asymptotic approximations are adequate for sample sizes typically used in economics. The tests are used to construct confidence intervals for average GNP growth rates for eight industrialized countries using post-war data.

确定性趋势函数序列相关假设检验单位根