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A Centered Bivariate Spatial Regression Model for Binary Data with an Application to Presettlement Vegetation Data in the Midwestern United States

机译:二进制数据的中心双变量空间回归模型及其在美国中西部地区植被数据预置中的应用

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摘要

Spatially structured discrete data arise in diverse areas of application, such as forestry, epidemiology, or soil sciences. Data from several binary variables are often collected at each location. Variation in distributional properties across the spatial domain is of interest. The specific application that motivates our work involves characterizing historical distributions of two species of Oak in the Driftless Area in the Midwestern United States. Scientists are interested in understanding the patterns of interaction between species, as well as their relationships to spatial covariates. Accounting for spatial dependence is not only of inherent interest but also reduces prediction mean squared error, and is necessary for obtaining appropriate measures of uncertainty (i.e., standard errors and confidence intervals). To address the needs of the application, we introduce a centered bivariate autologistic model, which accounts for the statistical dependence in two response variables simultaneously, for the association between them and for the effect of spatial covariates. The model proposed here offers a relatively stable large-scale model structure, with model parameters which can be interpreted in the usual sense across levels of dependence. Since the model allows for separate dependence parameters for each variable, it offers, in essence, the equivalent of a model with a non-separable covariance function. The flexible model framework permits straightforward generalizations to structures with more than two variables, a temporal component, or an irregular lattice domain.
机译:空间结构离散数据出现在不同的应用领域,例如林业,流行病学或土壤科学。通常会在每个位置收集来自几个二进制变量的数据。整个空间域中分布特性的变化是令人关注的。激发我们工作的具体应用涉及表征美国中西部无漂移地区的两种橡树的历史分布。科学家对了解物种之间相互作用的模式及其与空间协变量的关系感兴趣。考虑空间依赖性不仅具有内在的意义,而且还减小了预测均方误差,并且对于获得不确定性的适当度量(即标准误差和置信区间)是必要的。为了满足应用程序的需求,我们引入了一个中心的双变量自动逻辑模型,该模型同时考虑了两个响应变量之间的统计依赖性,它们之间的关联以及空间协变量的影响。这里提出的模型提供了一个相对稳定的大规模模型结构,其模型参数可以在通常的意义上跨依赖级别进行解释。由于模型允许每个变量使用独立的依存关系参数,因此从本质上讲,它提供了具有不可分离的协方差函数的模型的等效项。灵活的模型框架允许对具有两个以上变量(时间分量或不规则晶格域)的结构进行直接概括。

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