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Asymptotic Distribution and Finite Sample Bias Correction of QML Estimators for Spatial Error Dependence Model

机译:空间误差相关模型的QML估计量的渐近分布和有限样本偏差校正

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In studying the asymptotic and finite sample properties of quasi-maximum likelihood (QML) estimators for the spatial linear regression models, much attention has been paid to the spatial lag dependence (SLD) model; little has been given to its companion, the spatial error dependence (SED) model. In particular, the effect of spatial dependence on the convergence rate of the QML estimators has not been formally studied, and methods for correcting finite sample bias of the QML estimators have not been given. This paper fills in these gaps. Of the two, bias correction is particularly important to the applications of this model, as it leads potentially to much improved inferences for the regression coefficients. Contrary to the common perceptions, both the large and small sample behaviors of the QML estimators for the SED model can be different from those for the SLD model in terms of the rate of convergence and the magnitude of bias. Monte Carlo results show that the bias can be severe, and the proposed bias correction procedure is very effective.
机译:在研究空间线性回归模型的拟最大似然(QML)估计量的渐近和有限样本性质时,已对空间滞后依赖(SLD)模型给予了极大关注。与其相伴的是空间误差相关性(SED)模型。尤其是,尚未正式研究空间依赖性对QML估计量收敛速度的影响,还没有给出用于校正QML估计量有限样本偏差的方法。本文填补了这些空白。在这两种方法中,偏差校正对于此模型的应用尤为重要,因为它有可能大大改善对回归系数的推断。与通常的看法相反,用于SED模型的QML估计量的大小样本行为都可以与SLD模型的估计值在收敛速度和偏差幅度方面有所不同。蒙特卡洛结果表明,偏差可能很严重,所提出的偏差校正程序非常有效。

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