A Lagrange-Multiplier Test for Large Heterogeneous Panel Data Models

Natalia Bailey, Dandan Jiang, Jianfeng Yao
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引用次数: 2

Abstract

This paper introduces a new test for error cross-sectional independence in large panel data models with exogenous regressors having heterogenous slope coefficients. The proposed statistic, LM_{RMT}, is based on the Lagrange Multiplier (LM) principle and the sample correlation matrix R_{N} of the model's residuals. Since in large panels R_{N} poorly estimates its population counterpart, results from Random Matrix Theory are used to establish the high-dimensional limiting distribution of LM_{RMT} under heteroskedastic normal errors and assuming that both the panel size N and the sample size T grow to infinity in comparable magnitude. Simulation results support our theoretical findings, with LM_{RMT} being correctly sized (except for some small values of N and T). Further, the small sample size and power outcomes show robustness of our statistic to deviations from the assumptions of normality for the error terms and regressors, of strict exogeneity for the regressors, as well as of heterogeneity for their slope coefficients. The test has comparable small sample properties to related tests in the literature which have been developed under different asymptotic theory.
大型异质面板数据模型的拉格朗日乘数检验
本文介绍了一种在具有异质斜率系数的外生回归量的大面板数据模型中检验误差截面独立性的新方法。所提出的统计量LM_{RMT}是基于拉格朗日乘数(LM)原理和模型残差的样本相关矩阵R_{N}。由于在大型面板中R_{N}较差地估计其总体对应项,因此使用随机矩阵理论的结果来建立异方差正态误差下LM_{RMT}的高维极限分布,并假设面板大小N和样本量T都以相当的大小增长到无穷大。模拟结果支持了我们的理论发现,LM_{RMT}的大小是正确的(除了一些较小的N和T值)。此外,小样本量和功率结果表明,我们的统计数据对于偏离误差项和回归量的正态假设、回归量的严格外生性以及斜率系数的异质性都具有稳健性。该检验与文献中在不同渐近理论下开发的相关检验具有相当的小样本性质。
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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