Publisher Copyright: © 2021 The AuthorsThis paper advances the use of the ranked nodes method (RNM) to portray probabilistic relationships of continuous quantities in Bayesian networks (BNs). In RNM, continuous quantities are represented by ranked nodes with discrete ordinal scales. The probabilistic relationships of the nodes are quantified in conditional probability tables (CPTs) generated with expert-elicited parameters. When ranked nodes are formed by discretizing continuous scales, ignorance about the functioning of RNM can lead to discretizations that make the generation of sensible CPTs impossible. While a guideline exists on this matter, it is limited by a requirement to define an equal number of ordinal states for all the nodes. Th...
Abstract. Learning a Bayesian network from data is an important problem in biomedicine for the autom...
International audienceWe examine Bayesian cyclic networks, here defined as complete directed graphs ...
AbstractThis article presents and analyzes algorithms that systematically generate random Bayesian n...
Publisher Copyright: © 2022 The Author(s). Published by Informa UK Limited, trading as Taylor & Fran...
Publisher Copyright: © 2022 The Author(s). Published by Informa UK Limited, trading as Taylor & Fran...
Abstract — Although Bayesian Nets (BNs) are increasingly being used to solve real world risk problem...
Bayesian Networks (BNs) are graphical probabilistic models that offer a suitable modeling approach f...
Bayesian networks are a type of probabilistic graphic models composed of nodes and directed edges th...
This thesis studies the ranked nodes method (RNM) developed to construct conditional probability tab...
The objective of this thesis is to design an algorithm for learning the structure of non-parametric ...
This chapter introduces a probabilistic approach to modelling in physiology and medicine: the quanti...
Bayesian networks are directed acyclic graphs representing independence relationships among a set of...
This chapter introduces a probabilistic approach to modelling in physiology and medicine: the quanti...
In this paper we show how discrete and continuous variables can be combined using parametric conditi...
Conditional probability tables (CPTs) of discrete valued random variables may achieve high dimensi...
Abstract. Learning a Bayesian network from data is an important problem in biomedicine for the autom...
International audienceWe examine Bayesian cyclic networks, here defined as complete directed graphs ...
AbstractThis article presents and analyzes algorithms that systematically generate random Bayesian n...
Publisher Copyright: © 2022 The Author(s). Published by Informa UK Limited, trading as Taylor & Fran...
Publisher Copyright: © 2022 The Author(s). Published by Informa UK Limited, trading as Taylor & Fran...
Abstract — Although Bayesian Nets (BNs) are increasingly being used to solve real world risk problem...
Bayesian Networks (BNs) are graphical probabilistic models that offer a suitable modeling approach f...
Bayesian networks are a type of probabilistic graphic models composed of nodes and directed edges th...
This thesis studies the ranked nodes method (RNM) developed to construct conditional probability tab...
The objective of this thesis is to design an algorithm for learning the structure of non-parametric ...
This chapter introduces a probabilistic approach to modelling in physiology and medicine: the quanti...
Bayesian networks are directed acyclic graphs representing independence relationships among a set of...
This chapter introduces a probabilistic approach to modelling in physiology and medicine: the quanti...
In this paper we show how discrete and continuous variables can be combined using parametric conditi...
Conditional probability tables (CPTs) of discrete valued random variables may achieve high dimensi...
Abstract. Learning a Bayesian network from data is an important problem in biomedicine for the autom...
International audienceWe examine Bayesian cyclic networks, here defined as complete directed graphs ...
AbstractThis article presents and analyzes algorithms that systematically generate random Bayesian n...