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On the Correlation Structure of Gaussian Copula Models for Geostatistical Count Data

机译:地统计数据的高斯Copula模型的相关结构

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We describe a class of random field models for geostatistical count data based on Gaussian copulas. Unlike hierarchical Poisson models often used to describe this type of data, Gaussian copula models allow a more direct modelling of the marginal distributions and association structure of the count data. We study in detail the correlation structure of these random fields when the family of marginal distributions is either negative binomial or zero-inflated Poisson; these represent two types of overdispersion often encountered in geostatistical count data. We also contrast the correlation structure of one of these Gaussian copula models with that of a hierarchical Poisson model having the same family of marginal distributions, and show that the former is more flexible than the latter in terms of range of feasible correlation, sensitivity to the mean function and modelling of isotropy. An exploratory analysis of a dataset of Japanese beetle larvae counts illustrate some of the findings. All of these investigations show that Gaussian copula models are useful alternatives to hierarchical Poisson models, specially for geostatistical count data that display substantial correlation and small overdispersion.
机译:我们基于高斯copulas描述了一类用于地统计计数数据的随机字段模型。与通常用于描述此类数据的分层Poisson模型不同,高斯copula模型允许对计数数据的边际分布和关联结构进行更直接的建模。当边缘分布族为负二项式或零膨胀泊松时,我们将详细研究这些随机场的相关结构。这些代表了地统计计数数据中经常遇到的两种过度分散。我们还对比了这些高斯系模型中的一个与具有相同边际分布族的分层Poisson模型的相关结构,并表明在可行相关性的范围,对模型的敏感性方面,前者比后者更灵活。均值函数和各向同性建模。对日本甲虫幼虫计数数据集的探索性分析说明了一些发现。所有这些调查表明,高斯系谱模型是分层Poisson模型的有用替代方法,特别是对于显示出实质相关性和较小过度分散的地统计数据而言。

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