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Inferences in panel data with interactive effects using large covariance matrices

机译:使用大协方差矩阵的交互式效果在面板数据中推广

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We consider efficient estimation of panel data models with interactive effects, which relies on a high dimensional inverse covariance matrix estimator. By using a consistent estimator of the error covariance matrix, we can take into account both cross-sectional correlations and heteroskedasticity. In the presence of cross-sectional correlations, the proposed estimator eliminates the cross-sectional correlation bias, and is more efficient than the existing methods. The rate of convergence is also improved. In addition, we find that when the statistical inference involves estimating a high-dimensional inverse covariance matrix, the minimax convergence rate on large covariance estimations is not sufficient for inferences. To address this issue, a new "doubly weighted convergence" result is developed. The proposed method is applied to the US divorce rate data. We find that our more efficient estimator identifies the significant effects of divorce-law reforms on the divorce rate, and provides tighter confidence intervals than existing methods. This provides a confirmation for the empirical findings of Wolfers (2006) under more general unobserved heterogeneity. (C) 2017 Elsevier B.V. All rights reserved.
机译:我们考虑使用交互式效果有效地估计面板数据模型,这依赖于高维反协方差矩阵估计器。通过使用误差协方差矩阵的一致估计,我们可以考虑横截面相关性和异源性瘢痕度。在存在横截面相关性的情况下,所提出的估计器消除了横截面相关偏差,并且比现有方法更有效。收敛速度也得到改善。此外,我们发现当统计推断涉及估计高维反协方差矩阵时,大的协方差估计上的最小可收敛速率是不足的推论。要解决此问题,开发了一个新的“双重加权收敛”结果。该方法应用于美国离婚率数据。我们发现我们更高效的估计人确定了离婚法改革对离婚率的显着影响,并提供比现有方法更严格的置信区间。这提供了在更普遍的不观察到的异质性下进行沃尔夫斯(2006)的经验结果确认。 (c)2017 Elsevier B.v.保留所有权利。

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