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INSTRUMENTAL VARIABLES REGRESSION WITH WEAK INSTRUMENTS

机译:带有弱仪器的仪器变量回归

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This paper develops asymptotic distribution theory for single-equation instrumental variables regression when the partial correlations between the instruments and the endogenous variables are weak, here modeled as local to zero. Asymptotic representations are provided for various statistics, including two-stage least squares (TSLS) and limited information maximum likelihood (LIML) estimators, Wald statistics, and statistics testing overidentification and endogeneity. The asymptotic distributions are found to provide good approximations to sampling distributions with 10-20 observations per instrument. The theory suggests concrete guidelines for applied work, including using nonstandard methods for construction of confidence regions. These results are used to interpret Angrist and Krueger's (1991) estimates of the returns to education: whereas TSLS estimates with many instruments approach the OLS estimate of 6%, the more reliable LIML estimates with fewer instruments fall between 8% and 10%, with a typical 95% confidence interval of (5%, 15%).
机译:当单项工具变量与内生变量之间的局部相关性较弱时,本文开发了渐近分布理论,用于单方程工具变量回归,此处建模为局部到零。提供了用于各种统计量的渐近表示,包括两阶段最小二乘(TSLS)和有限信息最大似然(LIML)估计量,Wald统计量以及统计量检验的过度识别和内生性。发现渐近分布可以为每台仪器10-20个观测值的采样分布提供良好的近似值。该理论为应用工作提出了具体指导方针,包括使用非标准方法来构建置信区域。这些结果用于解释Angrist和Krueger(1991)对教育回报的估计:尽管使用许多工具的TSLS估计接近OLS估计值的6%,但是使用更少的工具获得的更可靠的LIML估计值介于8%和10%之间,典型的95%置信区间为(5%,15%)。

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