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Bayesian Variable Selection for Pareto Regression Models with Latent Multivariate Log Gamma Process with Applications to Earthquake Magnitudes

机译:具有潜在多元对数伽马过程的帕累托回归模型的贝叶斯变量选择及其在地震震级中的应用

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Generalized linear models are routinely used in many environment statistics problems such as earthquake magnitudes prediction. Hu et al. proposed Pareto regression with spatial random effects for earthquake magnitudes. In this paper, we propose Bayesian spatial variable selection for Pareto regression based on Bradley et al. and Hu et al. to tackle variable selection issue in generalized linear regression models with spatial random effects. A Bayesian hierarchical latent multivariate log gamma model framework is applied to account for spatial random effects to capture spatial dependence. We use two Bayesian model assessment criteria for variable selection including Conditional Predictive Ordinate (CPO) and Deviance Information Criterion (DIC). Furthermore, we show that these two Bayesian criteria have analytic connections with conditional AIC under the linear mixed model setting. We examine empirical performance of the proposed method via a simulation study and further demonstrate the applicability of the proposed method in an analysis of the earthquake data obtained from the United States Geological Survey (USGS).
机译:广义线性模型通常用于许多环境统计问题,例如地震震级预测。 Hu等。提出了具有地震随机性的空间随机效应的帕累托回归。在本文中,我们提出了基于Bradley等人的Pareto回归的贝叶斯空间变量选择。和胡等。解决具有空间随机效应的广义线性回归模型中的变量选择问题。贝叶斯分层潜变量对数伽马模型框架可用于解决空间随机效应以捕获空间依赖性。我们使用两个贝叶斯模型评估标准进行变量选择,包括条件预测标准(CPO)和偏差信息准则(DIC)。此外,我们表明在线性混合模型设置下,这两个贝叶斯准则与条件AIC具有解析联系。我们通过仿真研究检查了该方法的经验性能,并进一步证明了该方法在分析从美国地质调查局(USGS)获得的地震数据中的适用性。

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