Bayesian Spatial Nonparametric Models for Confounding Manifest Variables with an Application to China Earthquake Data

Yingzi Fu, Dexin Ren
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Abstract

We consider a Bayesian nonparametric models for spatial data of mixed category. Moreover, we adopt joint modeling strategy by assuming that responses and confounding variables are corresponding to continuous latent variables with multivariate Gaussian distribution. The model is built on a class of Gaussian Conditional Autoregressive (CAR) models, in combination with dependent sampling models (SSM) as well as probit stick-breaking process prior for accounting for complex interactions and high correlations of data. The key idea is to introducing spatial dependence by modeling the weights via probit transformation of Gaussian Markov random fields or discrete random probability measures of SSM. We illustrate the usefulness and effectiveness of the methodology through a real example from a China earthquake data set.
混杂显变量贝叶斯空间非参数模型在中国地震资料中的应用
研究了混合类别空间数据的贝叶斯非参数模型。此外,我们采用联合建模策略,假设响应和混杂变量对应于具有多元高斯分布的连续潜变量。该模型建立在一类高斯条件自回归(CAR)模型的基础上,结合依赖抽样模型(SSM)以及概率破棒过程,以考虑复杂的相互作用和数据的高相关性。关键思想是通过高斯马尔可夫随机场的probit变换或SSM的离散随机概率度量来建模权重,从而引入空间依赖性。我们通过中国地震数据集的实例说明了该方法的实用性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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