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A clipped latent variable model for spatially correlated ordered categorical data

机译:空间相关的有序分类数据的修剪潜变量模型

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We propose a model for a point-referenced spatially correlated ordered categorical response and methodology for inference. Models and methods for spatially correlated continuous response data are widespread, but models for spatially correlated categorical data, and especially ordered multi-category data, are less developed. Bayesian models and methodology have been proposed for the analysis of independent and clustered ordered categorical data, and also for binary and count point-referenced spatial data. We combine and extend these methods to describe a Bayesian model for point-referenced (as opposed to lattice) spatially correlated ordered categorical data. We include simulation results and show that our model offers superior predictive performance as compared to a non-spatial cumulative probit model and a more standard Bayesian generalized linear spatial model. We demonstrate the usefulness of our model in a real-world example to predict ordered categories describing stream health within the state of Maryland. Published by Elsevier B.V.
机译:我们提出了一个点参考空间相关的有序分类响应模型和推理方法。用于空间相关的连续响应数据的模型和方法很广泛,但是用于空间相关的分类数据,尤其是有序的多分类数据的模型开发较少。已经提出了贝叶斯模型和方法用于分析独立的和聚类的有序分类数据,以及用于二进制和计数点参考的空间数据。我们结合并扩展了这些方法,以描述针对点参考(与晶格相对)的空间相关有序分类数据的贝叶斯模型。我们包括了仿真结果,并表明与非空间累积概率模型和更标准的贝叶斯广义线性空间模型相比,我们的模型提供了卓越的预测性能。我们在一个实际示例中证明了我们的模型对预测描述马里兰州内河流健康状况的有序类别的有用性。由Elsevier B.V.发布

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