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Testing slope homogeneity in panel data models with a multifactor error structure

机译:使用多因素错误结构测试面板数据模型中的斜率均匀性

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摘要

Based on the common correlated effects (CCE) method and the Lagrange multiplier (LM) principle, this paper proposes a slope homogeneity test in a panel data model with a multifactor error structure that allows unobserved factors to be correlated with explanatory variables. The CCE method is first used to transform the regression equation to control for the unobserved common factors. Then, we adopt the idea of an LM-type test to conduct a homogeneity test. Our asymptotic analysis indicates that the test statistic is asymptotically normally distributed under the null hypothesis of homogeneity, regardless of the errors' normality or homoskedasticity, as both N and T go to infinity, with T-2/3 N-1 -> 0 and T-2 N-1 -> infinity. It is also proved that the test is asymptotically powerful under a sequence of Pitman local alternatives. Monte Carlo simulations indicate that the test has good finite sample properties for all combinations of N and T, with the exception of a large N/T. The simulation results also suggest that the proposed test is robust to the errors' non-normality and conditional heteroskedasticity.
机译:基于公共相关效果(CCE)方法和拉格朗日乘法器(LM)原理,本文提出了一种面板数据模型中的斜率同质性测试,其中多因素误差结构允许未观察到的因素与解释变量相关。 CCE方法首先用于将回归方程转换为控制不观察到的公共因素。然后,我们采用LM型测试的想法来进行同质性测试。我们的渐近分析表明,无论误差的正常度或HomoskEmastity如何,测试统计数据通常在均匀的均匀假设下分布,无论是误差的常态还是Homoskapicity,因为n和t都达到无穷大,用t-2/3 n-1 - > 0和0 T-2 N-1 - >无限远。还证实,根据皮特曼本地替代品序列,测试在渐近的强大。 Monte Carlo模拟表明,对于N和T的所有组合,测试具有良好的有限样本性质,除了大n / t。仿真结果还表明,所提出的测试对错误的非正常性和条件异质瘢痕性具有鲁棒性。

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