Asymptotic Theory for Clustered Samples

B. Hansen, Seojeong Lee
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引用次数: 70

Abstract

We provide a complete asymptotic distribution theory for clustered data with a large number of groups, generalizing the classic laws of large numbers, uniform laws, central limit theory, and clustered covariance matrix estimation. Our theory allows for clustered observations with heterogeneous and unbounded cluster sizes. Our conditions cleanly nest the classical results for i.n.i.d. observations, in the sense that our conditions specialize to the classical conditions under independent sampling. We use this theory to develop a full asymptotic distribution theory for estimation based on linear least-squares, 2SLS, nonlinear MLE, and nonlinear GMM.
聚类样本的渐近理论
推广了经典的大数定律、一致定律、中心极限理论和聚类协方差矩阵估计,给出了具有大量群的聚类数据的完备渐近分布理论。我们的理论允许具有异构和无界簇大小的群集观察。从某种意义上说,我们的条件专门针对独立采样下的经典条件,我们的条件干净地嵌套了i.i.d观测的经典结果。我们利用这一理论建立了一个完整的渐近分布理论,用于基于线性最小二乘、2SLS、非线性最大似然和非线性GMM的估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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