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Bayesian model determination for multivariate ordinal and binary data

机译:多元有序和二进制数据的贝叶斯模型确定

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Different conditional independence specifications for ordinal categorical data are compared by calculating a posterior distribution over classes of graphical models. The approach is based on the multivariate ordinal probit model where the data are considered to have arisen as truncated multivariate normal random vectors. By parameterising the precision matrix of the associated multivariate normal in Cholesky form, ordinal data models corresponding to directed acyclic conditional independence graphs for the latent variables can be specified and conveniently computed. Where one or more of the variables are binary this parameterisation is particularly compelling, as necessary constraints on the latent variable distribution can be imposed in such a way that a standard, fully normalised, prior can still be adopted. For comparing different directed graphical models a reversible jump Markov chain Monte Carlo (MCMC) approach is proposed. Where interest is focussed on undirected graphical models, this approach is augmented to allow switches in the orderings of variables of associated directed graphs, hence allowing the posterior distribution over decomposable undirected graphical models to be computed. The approach is illustrated with several examples, involving both binary and ordinal variables, and directed and undirected graphical model classes.
机译:通过计算图形模型类别的后验分布,比较了序数分类数据的不同条件独立性规范。该方法基于多元序数概率模型,在该模型中,数据被视为已被截断的多元正态随机向量。通过以Cholesky形式对关联的多元法线的精度矩阵进行参数化,可以指定和方便地计算与潜在变量的有向无环条件独立图相对应的序数数据模型。在一个或多个变量是二进制变量的情况下,此参数设置特别引人注目,因为对潜变量分布的必要限制可以以仍然可以采用完全标准化的标准先验的方式施加。为了比较不同的有向图模型,提出了一种可逆的跳跃马尔可夫链蒙特卡罗(MCMC)方法。当兴趣集中在无向图模型上时,这种方法得到了扩展,可以在关联的有向图的变量顺序中进行切换,因此可以计算可分解无向图模型的后验分布。通过几个示例说明了该方法,其中涉及二进制和序数变量以及有向和无向图形模型类。

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