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Regularized LIML for many instruments

机译:多种工具的正则LIML

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The use of many moment conditions improves the asymptotic efficiency of the instrumental variables estimators. However, in finite samples, the inclusion of an excessive number of moments increases the bias. To solve this problem, we propose regularized versions of the limited information maximum likelihood (LIML) based on three different regularizations: Tikhonov, Landweber-Fridman, and principal components. Our estimators are consistent and asymptotically normal under heteroskedastic error. Moreover, they reach the semiparametric efficiency bound assuming homoskedastic error. We show that the regularized LIML estimators possess finite moments when the sample size is large enough. The higher order expansion of the mean square error (MSE) shows the dominance of regularized LIML over regularized two-staged least squares estimators. We devise a data driven selection of the regularization parameter based on the approximate MSE. A Monte Carlo study and two empirical applications illustrate the relevance of our estimators. (C) 2015 The Authors. Published by Elsevier B.V.
机译:许多矩条件的使用提高了工具变量估计器的渐近效率。但是,在有限样本中,包含过多的矩会增加偏差。为了解决此问题,我们基于三种不同的正则化建议了有限信息最大似然(LIML)的正则化版本:Tikhonov,Landweber-Fridman和主成分。在异方差误差下,我们的估计是一致且渐近正态的。此外,假设同方差,它们达到半参数效率界限。我们表明,当样本大小足够大时,正规化LIML估计量具有有限矩。均方误差(MSE)的高阶展开表明,正规化LIML优于正规化两阶段最小二乘估计量。我们设计基于近似MSE的数据驱动的正则化参数选择。蒙特卡洛研究和两个经验应用说明了我们的估计量的相关性。 (C)2015作者。由Elsevier B.V.发布

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