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Asymptotic distributions of M-estimators in a spatial regression model under some fixed and stochastic spatial sampling designs

机译:某些固定和随机空间采样设计下空间回归模型中M估计量的渐近分布

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摘要

In this paper, we consider M-estimators of the regression parameter in a spatial multiple linear regression model. We establish consistency and asymptotic normality of the M-estimators when the data-sites are generated by a class of deterministic as well as a class of stochastic spatial sampling schemes. Under the deterministic sampling schemes, the data-sites are located on a regular grid but may have aninfill component. On the other hand, under the stochastic sampling schemes, locations of the data-sites are given by the realizations of a collection of independent random vectors and thus, are irregularly spaced. It is shown that scaling constants of different orders are needed for asymptotic normality under different spatial sampling schemes considered here. Further, in the stochastic case, the asymptotic covariance matrix is shown to depend on the spatial sampling density associated with the stochastic design. Results are established for M-estimators corresponding to certain non-smooth score functions including Huber’s ψ-function and the sign functions (corresponding to the sample quantiles).
机译:在本文中,我们考虑了空间多元线性回归模型中回归参数的M估计量。当数据站点由一类确定性以及一类随机空间采样方案生成时,我们建立M估计量的一致性和渐近正态性。在确定性采样方案下,数据站点位于常规网格上,但可能具有填充成分。另一方面,在随机采样方案下,数据站点的位置由独立随机矢量集合的实现给出,因此,它们之间的间距是不规则的。结果表明,在这里考虑的不同空间采样方案下,渐近正态性需要不同阶的缩放常数。此外,在随机情况下,渐近协方差矩阵显示为取决于与随机设计相关的空间采样密度。为与某些非光滑得分函数相对应的M估计器建立了结果,这些函数包括Huber的ψ函数和正负号函数(与样本分位数相对应)。

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