时变误差方差下近单位根过程的稳健推断

Robust Inference for Near-Unit Root Processes with Time-Varying Error Variances

Econometric Reviews · 2014
被引 6
人大 A-ABS 3

中文导读

研究了在无条件异方差下,使用柯西估计量进行单位根检验的方法,该检验无需估计方差轮廓或使用自助法,且对初始值大小具有稳健性。

Abstract

The autoregressive Cauchy estimator uses the sign of the first lag as instrumental variable (IV); under independent and identically distributed (i.i.d.) errors, the resulting IV t-type statistic is known to have a standard normal limiting distribution in the unit root case. With unconditional heteroskedasticity, the ordinary least squares (OLS) t statistic is affected in the unit root case; but the paper shows that, by using some nonlinear transformation behaving asymptotically like the sign as instrument, limiting normality of the IV t-type statistic is maintained when the series to be tested has no deterministic trends. Neither estimation of the so-called variance profile nor bootstrap procedures are required to this end. The Cauchy unit root test has power in the same 1/T neighborhoods as the usual unit root tests, also for a wide range of magnitudes for the initial value. It is furthermore shown to be competitive with other, bootstrap-based, robust tests. When the series exhibit a linear trend, however, the null distribution of the Cauchy test for a unit root becomes nonstandard, reminiscent of the Dickey-Fuller distribution. In this case, inference robust to nonstationary volatility is obtained via the wild bootstrap.

Cauchy估计量单位根检验异方差稳健推断工具变量