Markov Properties for Graphical Models with Cycles and Latent Variables

Open Access
Authors
Publication date 24-10-2017
Number of pages 131
Publisher Amsterdam: Informatics Institute, University of Amsterdam
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
We investigate probabilistic graphical models that allow for both cycles and latent variables. For this we introduce directed graphs with hyperedges (HEDGes), generalizing and combining both marginalized directed acyclic graphs (mDAGs) that can model latent (dependent) variables, and directed mixed graphs (DMGs) that can model cycles. We define and analyse several different Markov properties that relate the graphical structure of a HEDG with a probability distribution on a corresponding product space over the set of nodes, for example factorization properties, structural equations properties, ordered/local/global Markov properties, and marginal versions of these. The various Markov properties for HEDGes are in general not equivalent to each other when cycles or hyperedges are present, in contrast with the simpler case of directed acyclic graphical (DAG) models (also known as Bayesian networks). We show how the Markov properties for HEDGes - and thus the corresponding graphical Markov models - are logically related to each other.
Document type Working paper
Language English
Published at https://arxiv.org/abs/1710.08775
Downloads
1710.08775 (Submitted manuscript)
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