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首页> 外文期刊>R News >ngspatial: A Package for Fitting the Centered Autologistic and Sparse Spatial Generalized Linear Mixed Models for Areal Data
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ngspatial: A Package for Fitting the Centered Autologistic and Sparse Spatial Generalized Linear Mixed Models for Areal Data

机译:ngspatial:一种用于拟合区域数据的中心自动物流和稀疏空间广义线性混合模型的软件包

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摘要

Two important recent advances in areal modeling are the centered autologistic model and the sparse spatial generalized linear mixed model (SGLMM), both of which are reparameterizations of traditional models. The reparameterizations improve regression inference by alleviating spatial confounding, and the sparse SGLMM also greatly speeds computing by reducing the dimension of the spatial random effects. Package ngspatial (’ng’ = non-Gaussian) provides routines for fitting these new models. The package supports composite likelihood and Bayesian inference for the centered autologistic model, and Bayesian inference for the sparse SGLMM.
机译:区域建模的两个重要的最新进展是中心自动模型和稀疏空间广义线性混合模型(SGLMM),它们都是传统模型的重新参数化。重新参数化通过减轻空间混淆改善了回归推断,而稀疏SGLMM还通过减小空间随机效应的维数极大地加快了计算速度。软件包ngspatial('ng'=非高斯)提供了适合这些新模型的例程。该程序包支持针对中心自动物流模型的复合似然和贝叶斯推断,以及针对稀疏SGLMM的贝叶斯推断。

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