Structure Learning of Contextual Markov Networks using Marginal Pseudo-likelihood

03/29/2021
by   Johan Pensar, et al.
0

Markov networks are popular models for discrete multivariate systems where the dependence structure of the variables is specified by an undirected graph. To allow for more expressive dependence structures, several generalizations of Markov networks have been proposed. Here we consider the class of contextual Markov networks which takes into account possible context-specific independences among pairs of variables. Structure learning of contextual Markov networks is very challenging due to the extremely large number of possible structures. One of the main challenges has been to design a score, by which a structure can be assessed in terms of model fit related to complexity, without assuming chordality. Here we introduce the marginal pseudo-likelihood as an analytically tractable criterion for general contextual Markov networks. Our criterion is shown to yield a consistent structure estimator. Experiments demonstrate the favorable properties of our method in terms of predictive accuracy of the inferred models.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/20/2014

Marginal Pseudo-Likelihood Learning of Markov Network structures

Undirected graphical models known as Markov networks are popular for a w...
research
04/08/2022

On Projectivity in Markov Logic Networks

Markov Logic Networks (MLNs) define a probability distribution on relati...
research
01/14/2019

High-dimensional structure learning of binary pairwise Markov networks: A comparative numerical study

Learning the undirected graph structure of a Markov network from data is...
research
06/30/2023

High-Dimensional Bayesian Structure Learning in Gaussian Graphical Models using Marginal Pseudo-Likelihood

Gaussian graphical models depict the conditional dependencies between va...
research
04/14/2017

Graphical Models: An Extension to Random Graphs, Trees, and Other Objects

In this work, we consider an extension of graphical models to random gra...
research
05/27/2018

Contextual Graph Markov Model: A Deep and Generative Approach to Graph Processing

We introduce the Contextual Graph Markov Model, an approach combining id...
research
09/17/2021

The Node-wise Pseudo-marginal Method

Motivated by problems from neuroimaging in which existing approaches mak...

Please sign up or login with your details

Forgot password? Click here to reset