This paper introduces a Laplace approximation to Bayesian inference in Dirichlet regression models, which can be used to analyze a set of variables on a simplex exhibiting skewness and heteroscedasticity, without having to transform the data. These data, which mainly consist of proportions or percentages of disjoint categories, are widely known as compositional data and are common in areas such as ecology, geology, and psychology. We provide both the theoretical foundations and a description of how Laplace approximation can be implemented in the case of Dirichlet regression. The paper also introduces the package dirinla in the R-language that extends the R-INLA package, which can not deal directly with Dirichlet likelihoods. Simulation studies are presented to validate the good behaviour of the proposed method, while a real data case-study is used to show how this approach can be applied.
翻译:本文介绍Drichlet回归模型中Bayesian推论的Laplace近似值,该模型可用于分析一个显示扭曲性和异性且无需转换数据的简单x上的一系列变量,这些数据主要由脱节类别的比例或百分数组成,被广泛称为构成数据,在生态、地质和心理学等领域很常见。我们提供了理论基础和描述如何在Drichlet回归的情况下实施Laplace近似值。本文还介绍了R语中的扩展 R-INLA 包包的套件drinla,该套件无法直接处理Drichlet 的可能性。模拟研究旨在验证拟议方法的良好行为,同时使用真实的数据案例研究来说明如何应用这一方法。