我们能否在普通最小二乘法和有问题的工具变量方法之间做出明智选择?

CAN WE MAKE SMART CHOICES BETWEEN OLS AND CONTAMINATED IV METHODS?

Health Economics · 2013
被引 18
人大 A-

中文导读

提出一个诊断标准和配套软件,帮助应用研究者判断在存在内生性问题时,工具变量估计是否比普通最小二乘法更优,即使工具变量不完美。

Abstract

In the outcomes research and comparative effectiveness research literature, there are strong cautionary tales on the use of instrumental variables (IVs) that may influence the newly initiated to shun this premier tool for casual inference without properly weighing their advantages. It has been recommended that IV methods should be avoided if the instrument is not econometrically perfect. The fact that IVs can produce better results than naïve regression, even in nonideal circumstances, remains underappreciated. In this paper, we propose a diagnostic criterion and related software that can be used by an applied researcher to determine the plausible superiority of IV over an ordinary least squares (OLS) estimator, which does not address the endogeneity of a covariate in question. Given a reasonable lower bound for the bias arising out of an OLS estimator, the researcher can use our proposed diagnostic tool to confirm whether the IV at hand can produce a better estimate (i.e., with lower mean square error) of the true effect parameter than the OLS, without knowing the true level of contamination in the IV.

工具变量OLS估计量内生性诊断准则