工具变量
内生性
正交性
推论
异方差
计量经济学
数学
最小二乘函数近似
线性回归
统计
计算机科学
人工智能
几何学
估计员
作者
Sebastian Kripfganz,Jan F. Kiviet
出处
期刊:Stata Journal
[SAGE Publishing]
日期:2021-09-01
卷期号:21 (3): 772-813
被引量:64
标识
DOI:10.1177/1536867x211045575
摘要
In models with endogenous regressors, a standard regression approach is to exploit just-identifying or overidentifying orthogonality conditions by using instrumental variables. In just-identified models, the identifying orthogonality assumptions cannot be tested without the imposition of other nontestable assumptions. While formal testing of overidentifying restrictions is possible, its interpretation still hinges on the validity of an initial set of untestable just-identifying orthogonality conditions. We present the kinkyreg command for kinky least-squares inference, which adopts an alternative approach to identification. By exploiting nonorthogonality conditions in the form of bounds on the admissible degree of endogeneity, feasible test procedures can be constructed that do not require instrumental variables. The kinky least-squares confidence bands can be more informative than confidence intervals obtained from instrumental-variables estimation, especially when the instruments are weak. Moreover, the approach facilitates a sensitivity analysis for standard instrumental-variables inference. In particular, it allows the user to assess the validity of previously untestable just-identifying exclusion restrictions. Further instrument-free tests include linear hypotheses, functional form, heteroskedasticity, and serial correlation tests.
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