A Prior Distribution over Directed Acyclic Graphs for Sparse Bayesian Networks

04/25/2015
by   Felix L. Rios, et al.
0

The main contribution of this article is a new prior distribution over directed acyclic graphs, which gives larger weight to sparse graphs. This distribution is intended for structured Bayesian networks, where the structure is given by an ordered block model. That is, the nodes of the graph are objects which fall into categories (or blocks); the blocks have a natural ordering. The presence of a relationship between two objects is denoted by an arrow, from the object of lower category to the object of higher category. The models considered here were introduced in Kemp et al. (2004) for relational data and extended to multivariate data in Mansinghka et al. (2006). The prior over graph structures presented here has an explicit formula. The number of nodes in each layer of the graph follow a Hoppe Ewens urn model. We consider the situation where the nodes of the graph represent random variables, whose joint probability distribution factorises along the DAG. We describe Monte Carlo schemes for finding the optimal aposteriori structure given a data matrix and compare the performance with Mansinghka et al. (2006) and also with the uniform prior.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/18/2023

A Bayesian Nonparametric Stochastic Block Model for Directed Acyclic Graphs

Directed acyclic graphs (DAGs) are commonly used in statistics as models...
research
07/26/2023

GraphRNN Revisited: An Ablation Study and Extensions for Directed Acyclic Graphs

GraphRNN is a deep learning-based architecture proposed by You et al. fo...
research
09/09/2009

Structure Variability in Bayesian Networks

The structure of a Bayesian network encodes most of the information abou...
research
08/09/2021

Identification in Bayesian Estimation of the Skewness Matrix in a Multivariate Skew-Elliptical Distribution

Harvey et al. (2010) extended the Bayesian estimation method by Sahu et ...
research
11/09/2022

Decomposition of Probability Marginals for Security Games in Abstract Networks

Given a set system (E, 𝒫), let π∈ [0,1]^𝒫 be a vector of requirement val...
research
01/29/2020

The Indian Chefs Process

This paper introduces the Indian Chefs Process (ICP), a Bayesian nonpara...
research
06/03/2018

Structural Learning of Multivariate Regression Chain Graphs via Decomposition

We extend the decomposition approach for learning Bayesian networks (BN)...

Please sign up or login with your details

Forgot password? Click here to reset