Integrated Nested Laplace Approximation provides a fast and effective method for marginal inference on Bayesian hierarchical models. This methodology has been implemented in the R-INLA package which permits INLA to be used from within R statistical software. Although INLA is implemented as a general methodology, its use in practice is limited to the models implemented in the R-INLA package. Spatial autoregressive models are widely used in spatial econometrics but have until now been missing from the R-INLA package. In this paper, we describe the implementation and application of a new class of latent models in INLA made available through R-INLA. This new latent class implements a standard spatial lag model, which is widely used and that can be used to build more complex models in spatial econometrics. The implementation of this latent model in R-INLA also means that all the other features of INLA can be used for model fitting, model selection and inference in spatial econometrics, as will be shown in this paper. Finally, we will illustrate the use of this new latent model and its applications with two datasets based on Gaussian and binary outcomes.
翻译:综合Nested Laplace Approgentimation为Bayesian 等级模型的边际推断提供了一种快速有效的方法。这个方法已在R-INLA软件包中实施,该软件包允许在R-INLA内使用INLA。虽然INLA是作为一般方法加以实施,但实际使用仅限于R-INLA软件包中实施的模式。空间自动递减模型在空间计量中广泛使用,但在R-INLA软件包中却一直缺少。本文描述了通过R-INLA提供的新一类INLA潜伏模型的实施和应用情况。这一新潜伏模型采用的标准空间滞后模型,广泛使用,可用于在空间计量中构建更复杂的模型。在R-INLA软件包中实施这种潜伏模型还意味着,如本文件所示,国家环境法的所有其他特征都可以用于空间计量中的模型的匹配、模型选择和推断。最后,我们将用基于两个数据基的硬盘显示的新潜伏模型及其应用结果。