Context-specific independencies in stratified chain regression graphical models

IF 1.7 2区 数学 Q2 STATISTICS & PROBABILITY Bernoulli Pub Date : 2021-05-01 DOI:10.3150/20-BEJ1302
F. Nicolussi, M. Cazzaro
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引用次数: 2

Abstract

Graphical models are a useful tool with increasing diffusion. In the categorical variable framework, they provide important visual support to understand the relationships among the considered variables. Besides, particular chain graphical models are suitable to represent multivariate regression models. However, the associated parameterization, such as marginal log-linear models, is often difficult to interpret when the number of variables increases because of a large number of parameters involved. On the contrary, conditional and marginal independencies reduce the number of parameters needed to represent the joint probability distribution of the variables. In compliance with the parsimonious principle, it is worthwhile to consider also the so-called context-specific independencies, which are conditional independencies holding for particular values of the variables in the conditioning set. In this work, we propose a particular chain graphical model able to represent these context-specific independencies through labeled arcs. We provide also the Markov properties able to describe marginal, conditional, and context-specific independencies from this new chain graph. Finally, we show the results in an application to a real data set.
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分层链回归图形模型中上下文特定的独立性
随着扩散的增加,图形模型是一个有用的工具。在分类变量框架中,它们为理解所考虑的变量之间的关系提供了重要的视觉支持。此外,特定的链图模型适合表示多元回归模型。然而,当变量数量增加时,相关的参数化,如边际对数线性模型,往往难以解释,因为涉及大量参数。相反,条件独立性和边际独立性减少了表示变量联合概率分布所需的参数数量。遵循简约原则,也值得考虑所谓的上下文特定独立性,这是条件独立性,适用于条件集中变量的特定值。在这项工作中,我们提出了一个特殊的链图模型,能够通过标记弧来表示这些特定于上下文的独立性。我们还提供了马尔可夫属性,能够从这个新的链图中描述边际、条件和特定于上下文的独立性。最后,我们在一个实际数据集的应用中展示了结果。
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来源期刊
Bernoulli
Bernoulli 数学-统计学与概率论
CiteScore
3.40
自引率
0.00%
发文量
116
审稿时长
6-12 weeks
期刊介绍: BERNOULLI is the journal of the Bernoulli Society for Mathematical Statistics and Probability, issued four times per year. The journal provides a comprehensive account of important developments in the fields of statistics and probability, offering an international forum for both theoretical and applied work. BERNOULLI will publish: Papers containing original and significant research contributions: with background, mathematical derivation and discussion of the results in suitable detail and, where appropriate, with discussion of interesting applications in relation to the methodology proposed. Papers of the following two types will also be considered for publication, provided they are judged to enhance the dissemination of research: Review papers which provide an integrated critical survey of some area of probability and statistics and discuss important recent developments. Scholarly written papers on some historical significant aspect of statistics and probability.
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