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Higher Order Mean Squared Error of Generalized Method of Moments Estimators for Nonlinear Models

机译:非线性模型矩估计的广义方法的高阶均方误差

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Generalized method of moments (GMM) has been widely applied for estimation of nonlinear models in economics and finance. Although generalized method of moments has good asymptotic properties under fairly moderate regularity conditions, its finite sample performance is not very well. In order to improve the finite sample performance of generalized method of moments estimators, this paper studies higher-order mean squared error of two-step efficient generalized method of moments estimators for nonlinear models. Specially, we consider a general nonlinear regression model with endogeneity and derive the higher-order asymptotic mean square error for two-step efficient generalized method of moments estimator for this model using iterative techniques and higher-order asymptotic theories. Our theoretical results allow the number of moments to grow with sample size, and are suitable for general moment restriction models, which contains conditional moment restriction models as special cases. The higher-order mean square error can be used to compare different estimators and to construct the selection criteria for improving estimator’s finite sample performance.
机译:广义矩量法(GMM)已广泛应用于经济学和金融学中的非线性模型估计。尽管广义矩方法在相当适度的规律性条件下具有良好的渐近性质,但其有限样本性能却不是很好。为了提高矩量估计器广义方法的有限样本性能,本文研究了非线性模型两步有效矩量估计器的高阶均方误差。特别地,我们考虑具有内生性的通用非线性回归模型,并使用迭代技术和高阶渐近理论推导该模型的两步有效矩估计量的高阶渐进均方误差。我们的理论结果允许矩数随样本量的增长而增加,并且适用于一般矩量限制模型,该模型包含特殊情况下的条件矩量限制模型。高阶均方误差可用于比较不同的估计量,并构建选择标准以提高估计量的有限样本性能。

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