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Robust estimation and inference of spatial panel data models with fixed effects

机译:具有固定效果的空间面板数据模型的鲁棒估计和推动

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It is well established that the quasi maximum likelihood (QML) estimation of the spatial regression models is generally inconsistent under unknown cross-sectional heteroskedasticity (CH) and the CH-robust methods have been developed. The same issue remains for the spatial panel data (SPD) models but the similar studies based on QML approach do not seem to have been carried out. This paper focuses on the SPD model with fixed effects (FE), We argue that under unknown CH the QML estimator for the SPD-FE model is inconsistent in general, but there are 'special cases' where it may remain consistent although the exact conditions may not be possible to check, as in practice the type of CH is generally unknown. Thus, we introduce a new set of estimation and inference methods based on the adjusted quasi scores (AQS), which are fully robust against unknown CH. Consistency and asymptotic normality of the proposed AQS estimators are established. Robust standard error estimates are provided and their consistency is proved. To improve the finite sample performance, a set of AQS methods based on concentrated quasi scores is also introduced and its asymptotic properties examined. Extensive Monte Carlo results show that the new estimator outperforms the QML estimator even when the latter seems robust.
机译:很好地确定,在空间回归模型的准最大似然(QML)估计通常在未知的横截面异质性(CH)下不一致,并且已经开发了CH鲁棒方法。空间面板数据(SPD)模型仍然存在相同的问题,但基于QML方法的类似研究似乎没有进行。本文侧重于具有固定效果(FE)的SPD模型,我们认为,根据未知的CH,SPD-FE模型的QML估计通常一般不一致,但有“特殊情况”虽然确切条件可能保持一致可能无法检查,如在实践中,CH的类型通常是未知的。因此,我们介绍了基于调整后的准分数(AQ)的新一组估计和推断方法,这对于未知CH来说是完全鲁棒的。建立了拟议的AQS估算估计人员的一致性和渐近常态。提供了强大的标准错误估计,并证明了它们的一致性。为了提高有限的样品性能,还引入了一组基于浓缩量评分的AQS方法,并检查了其渐近性能。广泛的蒙特卡罗结果表明,即使后者似乎坚固,新估计器也会优于QML估计器。

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