Journal article

Non-parametric Bayesian networks: Improving theory and reviewing applications

A Hanea, O Morales Napoles, D Ababei

Reliability Engineering and System Safety | ELSEVIER SCI LTD | Published : 2015

Abstract

Applications in various domains often lead to high dimensional dependence modelling. A Bayesian network (BN) is a probabilistic graphical model that provides an elegant way of expressing the joint distribution of a large number of interrelated variables. BNs have been successfully used to represent uncertain knowledge in a variety of fields. The majority of applications use discrete BNs, i.e. BNs whose nodes represent discrete variables. Integrating continuous variables in BNs is an area fraught with difficulty. Several methods that handle discrete-continuous BNs have been proposed in the literature. This paper concentrates only on one method called non-parametric BNs (NPBNs). NPBNs were int..

View full abstract

University of Melbourne Researchers