We introduce efficient MCMC algorithms for Bayesian inference for single-factor models with correlated residuals where the residuals' distribution is a Gaussian graphical model. We call this family of models single-factor graphical models. We extend single-factor graphical models to datasets that also involve binary and ordinal categorical variables and to the modeling of multiple datasets that are spatially or temporally related. Our models are able to capture multivariate associations through latent factors across time and space, as well as residual conditional dependence structures at each spatial location or time point through Gaussian graphical models. We illustrate the application of single-factor graphical models in simulated and real-world examples.
翻译:本文针对具有相关残差的单因子模型提出了高效的MCMC贝叶斯推断算法,其中残差分布采用高斯图模型。我们将此类模型统称为单因子图模型。我们将单因子图模型拓展至包含二元及有序分类变量的数据集,并推广到空间或时间相关的多数据集建模。该模型能够通过潜在因子捕捉跨时空的多元关联,同时借助高斯图模型刻画每个空间位置或时间点的残差条件依赖结构。我们通过模拟与真实案例展示了单因子图模型的应用。