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THE ASYMPTOTIC PROPERTIES OF THE SYSTEM GMM ESTIMATOR IN DYNAMIC PANEL DATA MODELS WHEN BOTH N AND T ARE LARGE

机译:N和T都很大时动态面板数据模型中系统GMM估计的渐近性质

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摘要

In this paper, we derive the asymptotic properties of the system generalized method of moments (GMM) estimator in dynamic panel data models with individual and time effects when both N and T, the dimensions of cross-section and time series, are large. Specifically, we show that the two-step system GMM estimator is consistent when a suboptimal weighting matrix where off-diagonal blocks are set to zero is used. Such consistency results theoretically support the use of the system GMM estimator in large N and T contexts even though it was originally developed for large N and small T panels. Simulation results indicate that the large N and large T asymptotic results approximate the finite sample behavior reasonably well unless persistency of data is strong and/or the variance ratio of individual effects to the disturbances is large.
机译:本文在动态面板数据模型中,当N和T,横截面和时间序列的维数都较大时,在具有个体效应和时间效应的情况下,得出系统广义矩估计(GMM)估计器的渐近性质。具体而言,我们表明,当使用非对角线块设置为零的次优加权矩阵时,两步系统GMM估计量是一致的。这种一致性结果理论上支持在大N和T上下文中使用系统GMM估计器,即使它最初是为大N和小T面板开发的。仿真结果表明,除非数据的持久性强和/或个体效应与干扰的方差比大,否则大的N和大的T渐近结果会很好地近似有限采样行为。

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