含内生解释变量的广义回归模型中因果效应的检验

Testing for Causal Effects in a Generalized Regression Model With Endogenous Regressors

Econometrica · 2010
被引 50
人大 A+FT50ABS 4*

中文导读

提出一个统一框架,用于检验非线性模型中内生解释变量的因果效应,基于核加权的秩相关统计量,允许处理多种类型的内生变量。

Abstract

A unifying framework to test for causal effects in nonlinear models is proposed. We consider a generalized linear-index regression model with endogenous regressors and no parametric assumptions on the error disturbances. To test the significance of the effect of an endogenous regressor, we propose a statistic that is a kernel-weighted version of the rank correlation statistic (tau) of Kendall (1938). The semiparametric model encompasses previous cases considered in the literature (continuous endogenous regressors (Blundell and Powell (2003)) and a single binary endogenous regressor (Vytlacil and Yildiz (2007))), but the testing approach is the first to allow for (i) multiple discrete endogenous regressors, (ii) endogenous regressors that are neither discrete nor continuous (e.g., a censored variable), and (iii) an arbitrary "mix" of endogenous regressors (e.g., one binary regressor and one continuous regressor).

内生性检验广义回归模型非参数检验秩相关统计量