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Bayesian residual analysis for spatially correlated data

机译:空间相关数据的贝叶斯残余分析

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This work considers residual analysis and predictive techniques for the identification of individual and multiple outliers in geostatistical data. The standardized Bayesian spatial residual is proposed and computed for three competing models: the Gaussian, Student-t and Gaussian-log-Gaussian spatial processes. In this context, the spatial models are investigated regarding their plausibility for datasets contaminated with outliers. The posterior probability of an outlying observation is computed based on the standardized residuals and different thresholds for outlier discrimination are tested. From a predictive point of view, methods such as the conditional predictive ordinate, the predictive concordance and the Savage-Dickey density ratio for hypothesis testing are investigated for identification of outliers in the spatial setting. For illustration, contaminated datasets are considered to assess the performance of the three spatial models for identification of outliers in spatial data. Furthermore, an application to wind speed modelling is presented to illustrate the usefulness of the proposed tools to detect regions with large wind speeds.
机译:这项工作考虑了用于识别地质统计数据中个体和多个异常值的剩余分析和预测技术。标准化的贝叶斯空间剩余剩余,以三个竞争模式计算和计算:高斯,学生-T和高斯 - 记录高斯空间流程。在这种情况下,对其具有异常值污染的数据集的合理性研究了空间模型。基于标准化残差计算远外观察的后概率,并且测试了对异常值判别的不同阈值。从预测的角度来看,研究了假设检测的条件预测纵坐标,预测的一致性和野蛮的DICKEY密度比,以识别空间设置中的异常值。为了说明,被认为是污染的数据集来评估三个空间模型的性能,以确定空间数据中的异常值。此外,提出了一种对风速建模的应用以说明所提出的工具检测具有大风速的区域的有用性。

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