On a hypergraph probabilistic graphical model

11/20/2018
by   Mohammad ali Javidian, et al.
0

We propose a directed acyclic hypergraph framework for a probabilistic graphical model that we call Bayesian hypergraphs. The space of directed acyclic hypergraphs is much larger than the space of chain graphs. Hence Bayesian hypergraphs can model much finer factorizations than Bayesian networks or LWF chain graphs and provide simpler and more computationally efficient procedures for factorizations and interventions. Bayesian hypergraphs also allow a modeler to represent causal patterns of interaction such as Noisy-OR graphically (without additional annotations). We introduce global, local and pairwise Markov properties of Bayesian hypergraphs and prove under which conditions they are equivalent. We define a projection operator, called shadow, that maps Bayesian hypergraphs to chain graphs, and show that the Markov properties of a Bayesian hypergraph are equivalent to those of its corresponding chain graph. We extend the causal interpretation of LWF chain graphs to Bayesian hypergraphs and provide corresponding formulas and a graphical criterion for intervention.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/24/2017

Markov Properties for Graphical Models with Cycles and Latent Variables

We investigate probabilistic graphical models that allow for both cycles...
research
01/30/2013

Bayesian Networks from the Point of View of Chain Graphs

AThe paper gives a few arguments in favour of the use of chain graphs fo...
research
05/29/2020

Learning LWF Chain Graphs: A Markov Blanket Discovery Approach

This paper provides a graphical characterization of Markov blankets in c...
research
02/29/2012

Uniform random generation of large acyclic digraphs

Directed acyclic graphs are the basic representation of the structure un...
research
05/17/2023

Generating Bayesian Network Models from Data Using Tsetlin Machines

Bayesian networks (BN) are directed acyclic graphical (DAG) models that ...
research
06/05/2013

Structural Intervention Distance (SID) for Evaluating Causal Graphs

Causal inference relies on the structure of a graph, often a directed ac...
research
09/14/2022

Identifying Causal Effects on a Chain Event Graph for Remedial Interventions

To efficiently analyse system reliability, graphical tools such as fault...

Please sign up or login with your details

Forgot password? Click here to reset