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Asymptotic properties of a robust variance matrix estimator for panel data when T is large

机译:T大时面板数据的鲁棒方差矩阵估计器的渐近性质

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摘要

I consider the asymptotic properties of a commonly advocated covariance matrix estimator for panel data. Under asymptotics where the cross-section dimension, n, grows large with the time dimension, T, fixed, the estimator is consistent while allowingessentially arbitrary correlation within each individual. However, many panel data sets have a non-negligible time dimension. I extend the usual analysis to cases where n and T go to infinity jointly and where Tinfinity with n fixed. I provide conditions under which t and F statistics based on the covariance matrix estimator provide valid inference and illustrate the properties of the estimator in a simulation study.
机译:我考虑了面板数据常用的协方差矩阵估计器的渐近性质。在横截面尺寸n随着时间尺寸T固定增长而渐近的情况下,估计量是一致的,同时允许每个个体内的基本任意相关。但是,许多面板数据集具有不可忽略的时间维度。我将通常的分析扩展到n和T共同变为无穷大以及固定n的Tinfinity的情况。我提供了基于协方差矩阵估计量的t和F统计量提供有效推断的条件,并说明了模拟研究中估计量的性质。

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