Unifying Markov properties for graphical models

Steffen L. Lauritzen, Kayvan Sadeghi Sadeghi

10 Citations (Scopus)
31 Downloads (Pure)

Abstract

Several types of graphs with different conditional independence interpretations—also known as Markov properties—have been proposed and used in graphical models. In this paper, we unify these Markov properties by introducing a class of graphs with four types of edges—lines, arrows, arcs and dotted lines—and a single separation criterion. We show that independence structures defined by this class specialize to each of the previously defined cases, when suitable subclasses of graphs are considered. In addition, we define a pairwise Markov property for the subclass of chain mixed graphs, which includes chain graphs with the LWF interpretation, as well as summary graphs (and consequently ancestral graphs). We prove the equivalence of this pairwise Markov property to the global Markov property for compositional graphoid independence models.
Original languageEnglish
JournalAnnals of Statistics
Volume46
Issue number5
Pages (from-to)2251-2278
ISSN0090-5364
DOIs
Publication statusPublished - Oct 2018

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