Depending on the interpretation of the type of edges, a chain graph can represent different relations between variables and thereby independence models. Three interpretations, known by the acronyms LWF, MVR, and AMP, are prevalent. Multivariate regression chain graphs (MVR CGs) were introduced by Cox and Wermuth in 1993. We review Markov properties for MVR chain graphs and propose an alternative global and local Markov property for them. Except for pairwise Markov properties, we show that for MVR chain graphs all Markov properties in the literature are equivalent for semi-graphoids. We derive a new factorization formula for MVR chain graphs which is more explicit than and different from the proposed factorizations for MVR chain graphs in the literature. Finally, we provide a summary table comparing different features of LWF, AMP, and MVR chain graphs.
翻译:根据对边缘类型的解释,链条图可以代表不同变量和独立模式之间的不同关系。三种解释(缩略语LWF、MVR和AMP)很普遍。1993年Cox和Wermuth采用了多变量回归链图(MVR CGs ) 。我们为MVR链条图审查了Markov特性,并为这些特性提出了另一种全球和地方的Markov属性。除了对称的Markov特性外,我们显示,对于MVR链条图而言,文献中所有Markov特性都相当于半图类。我们为MVR链图提出了一种新的因子化公式,该公式比文献中MVR链图的拟议因子化法更加明确和不同。最后,我们提供了一份总表,比较LWFF、AMP和MVR链图的不同特征。