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Minimum distance approach to inference with many instruments

机译:许多仪器推断的最小距离方法

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摘要

I analyze a linear instrumental variables model with a single endogenous regressor and many instruments. I use invariance arguments to construct a new minimum distance objective function. With respect to a particular weight matrix, the minimum distance estimator is equivalent to the random effects estimator of Chamberlain and Imbens (2004), and the estimator of the coefficient on the endogenous regressor coincides with the limited information maximum likelihood estimator. This weight matrix is inefficient unless the errors are normal, and I construct a new, more efficient estimator based on the optimal weight matrix. Finally, I show that when the minimum distance objective function does not impose a proportionality restriction on the reduced-form coefficients, the resulting estimator corresponds to a version of the bias-corrected two-stage least squares estimator. I use the objective function to construct confidence intervals that remain valid when the proportionality restriction is violated. (C) 2018 Elsevier B.V. All rights reserved.
机译:我用单个内源性回归和许多仪器分析一个线性乐器变量模型。我使用不变性参数来构造新的最小距离目标函数。关于特定权重矩阵,最小距离估计器等同于腔室和Imbens(2004)的随机效应估计器,并且内源性回归的系数的估计与限量信息最大似然估计器一致。除非错误是正常的,否则此权重矩阵效率低效率低,并且我基于最佳权重矩阵构建一个新的更高效的估计器。最后,我表明,当最小距离目标函数对减小的系数不施加比例限制时,所得到的估计器对应于偏置校正的两级最小二乘估计器的版本。我使用目标函数来构建违反比例限制时保持有效的置信区间。 (c)2018 Elsevier B.v.保留所有权利。

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