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Consistency and asymptotic normality of least squares estimators in generalized STAR models

机译:广义STAR模型中最小二乘估计的相合性和渐近正态性

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摘要

Space-time autoregressive (STAR) models, introduced by Cliff and Ord [Spatial autocorrelation (1973) Pioneer, London] are successfully applied in many areas of science, particularly when there is prior information about spatial dependence. These models have significantly fewer parameters than vector autoregressive models, where all information about spatial and time dependence is deduced from the data. A more flexible class of models, generalized STAR models, has been introduced in Borovkova et al. [Proc. 17th Int. Workshop Stat. Model. (2002), Chania, Greece] where the model parameters are allowed to vary per location. This paper establishes strong consistency and asymptotic normality of the least squares estimator in generalized STAR models. These results are obtained under minimal conditions on the sequence of innovations, which are assumed to form a martingale difference array. We investigate the quality of the normal approximation for finite samples by means of a numerical simulation study, and apply a generalized STAR model to a multivariate time series of monthly tea production in west Java, Indonesia.
机译:由Cliff和Ord提出的时空自回归(STAR)模型[Spatial autocorrelation(1973),Pioneer,伦敦]已成功应用于许多科学领域,尤其是在已有关于空间依赖性的先验信息时。这些模型比矢量自回归模型具有更少的参数,矢量自回归模型是从数据中推导出所有有关空间和时间依赖性的信息的。 Borovkova等人引入了一种更为灵活的模型,即广义STAR模型。 [过程第十七届国际车间统计模型。 (2002),干尼亚,希腊],其中模型参数允许随位置而变化。本文建立了广义STAR模型中最小二乘估计的强一致性和渐近正态性。这些结果是在创新条件的极少条件下获得的,这些条件被认为构成了a差阵列。我们通过数值模拟研究调查有限样品的正态近似质量,并将广义STAR模型应用于印度尼西亚西爪哇省每月茶产量的多元时间序列。

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