Selection Criterion of Working Correlation Structure for Spatially Correlated Data

Marcelo dos Santos, F. De Bastiani, M. Uribe-Opazo, M. Galea
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引用次数: 1

Abstract

Abstract To obtain regression parameter estimates in generalized estimation equation modeling, whether in longitudinal or spatially correlated data, it is necessary to specify the structure of the working correlation matrix. The regression parameter estimates can be affected by the choice of this matrix. Within spatial statistics, the correlation matrix also influences how spatial variability is modeled. Therefore, this study proposes a new method for selecting a working matrix, based on conditioning the variance-covariance matrix naive. The method performance is evaluated by an extensive simulation study, using the marginal distributions of normal, Poisson, and gamma for spatially correlated data. The correlation structure specification is based on semivariogram models, using the Wendland, Matérn, and spherical model families. The results reveal that regarding the hit rates of the true spatial correlation structure of simulated data, the proposed criterion resulted in better performance than competing criteria: quasi-likelihood under the independence model criterion QIC, correlation information criterion CIC, and the Rotnizky–Jewell criterion RJC. The application of an appropriate spatial correlation structure selection was shown using the first-semester average rainfall data of 2021 in the state of Pernambuco, Brazil.
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空间相关数据的工作关联结构选择准则
摘要为了获得广义估计方程建模中的回归参数估计,无论是纵向还是空间相关数据,都需要指定工作相关矩阵的结构。该矩阵的选择会影响回归参数的估计。在空间统计中,相关矩阵也影响空间变异性的建模方式。因此,本研究提出了一种新的选择工作矩阵的方法,该方法基于方差-协方差矩阵的朴素条件。该方法的性能通过广泛的模拟研究进行评估,使用正态分布,泊松分布和伽玛空间相关数据的边际分布。相关结构规范基于半变差模型,使用Wendland、mat和球形模型族。结果表明,对于模拟数据真实空间相关结构的准确率,本文提出的准则优于独立模型准则QIC下的准似然准则、相关信息准则CIC下的准似然准则和Rotnizky-Jewell准则RJC下的准似然准则。以巴西伯南布哥州2021年上半年平均降雨量数据为例,展示了空间相关结构选择的应用。
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