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Bootstrap inference for instrumental variable models with many weak instruments

机译:具有许多弱仪器的仪器变量模型的自举推理

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This study's main contribution is to theoretically analyze the application of bootstrap methods to instrumental variable models when the available instruments may be weak and the number of instruments goes to infinity with the sample size. We demonstrate that a standard residual-based bootstrap procedure cannot consistently estimate the distribution of the limited information maximum likelihood estimator or Fuller (1977) estimator under many/many weak instrument sequence. The primary reason is that the standard procedure fails to capture the instrument strength in the sample adequately. In addition, we consider the restricted efficient (RE) bootstrap of Davidson and MacKinnon (2008, 2010, 2014) that generates bootstrap data under the null (restricted) and uses an efficient estimator of the coefficient of the reduced-form equation (efficient). We find that the RE bootstrap is also invalid; however, it effectively mimics more key features in the limiting distributions of interest, and thus, is less distorted in finite samples than the standard bootstrap procedure. Finally, we propose modified bootstrap procedures that provide a valid distributional approximation for the two estimators with many/many weak instruments. A Monte Carlo experiment shows that hypothesis testing based on the asymptotic normal approximation can have severe size distortions in finite samples. Instead, our modified bootstrap procedures greatly reduce these distortions. (C) 2016 Elsevier B.V. All rights reserved.
机译:这项研究的主要贡献是从理论上分析了自举方法在工具变量模型中的应用,当可用的工具可能很弱并且工具的数量随样本数量达到无穷大时。我们证明标准的基于残差的自举程序无法在许多弱仪器序列下一致地估计有限信息的最大似然估计器或Fuller(1977)估计器的分布。主要原因是标准程序无法充分捕获样品中的仪器强度。此外,我们考虑了Davidson和MacKinnon(2008,2010,2014)的受限有效(RE)引导程序,该引导程序在零值(受限制)下生成引导程序数据,并使用归约形式方程系数的有效估计量(有效) 。我们发现RE引导程序也无效;但是,它有效地模拟了感兴趣的有限分布中的更多关键特征,因此与标准的自举程序相比,它在有限样本中的失真较小。最后,我们提出了改进的自举程序,该程序为具有许多弱工具的两个估计量提供了有效的分布近似。蒙特卡洛实验表明,基于渐近正态近似的假设检验在有限样本中可能会出现严重的尺寸失真。相反,我们修改后的引导程序大大减少了这些失真。 (C)2016 Elsevier B.V.保留所有权利。

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