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Global and local diagnostic analytics for a geostatistical model based on a new approach to quantile regression

机译:基于新方法的分位数回归的全球和本地诊断分析

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摘要

Data with spatial dependence are often modeled by geoestatistical tools. In spatial regression, the mean response is described using explanatory variables with georeferenced data. This modeling frequently considers Gaussianity assuming the response follows a symmetric distribution. However, when this assumption is not satisfied, it is useful to suppose distributions with the same asymmetric behavior of the data. This is the case of the Birnbaum-Saunders (BS) distribution, which has been considered in different areas and particularly in environmental sciences due to its theoretical arguments. We propose a geostatistical model based on a new approach to quantile regression considering the BS distribution. Global and local diagnostic analytics are derived for this model. The estimation of model parameters and its local influence are conducted by the maximum likelihood method. Global influence is based on the Cook distance and it is compared to local influence, in both cases to detect influential observations, whose detection and removal can modify the conclusions of a study. We illustrate the proposed methodology applying it to environmental data, which shows this situation changing the conclusions after removing potentially influential observations. A comparison with Gaussian spatial regression is conducted.
机译:具有空间依赖性的数据通常由地形统计工具进行建模。在空间回归中,使用具有地理学数据的解释性变量来描述平均响应。这种建模经常考虑Paussianity假设响应遵循对称分布。但是,当不满足此假设时,假设具有相同数据的不对称行为的分布是有用的。这是Birnbaum-Saunders(BS)分布的情况,在不同领域中被认为是由于其理论争论,特别是环境科学。我们提出了一种基于对考虑BS分布的量化回归的新方法来提出了一种地统计模型。为此模型导出全局和本地诊断分析。通过最大似然法进行模型参数及其局部影响的估计。全局影响基于烹饪距离,在两种情况下,它与局部影响相比,以检测其检测和去除可以修改研究的结论。我们说明了将其应用于环境数据的提出的方法,其显示出这种情况在消除可能影响可能的观察后改变了结论。进行了与高斯空间回归的比较。

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