Evidential Reasoning (ER), based on the Dempster-Schafer theory of evidence, and Bayesian Networks (BN) are two distinct theories and methodologies for modelling and reasoning with data regarding propositions in uncertain domains. Both ER and BNs incorporate graphical representations and quantitative approaches of uncertainty. BNs are probability models consisting of a directed acyclic graph, which represents conditional independence assumptions in the joint probability distribution. Whereas ER graphically describes knowledge through an evaluation hierarchy and the relationships of the attributes based on Dempster-Shafer theory of belief functions. Therefore, this paper proposes an algorithm, which allows for the conversion of the linear in...
This paper reports our investigation on the problem of belief update in Bayesian networks (BN) using...
Smets proposes the Pignistic Probability Transformation (PPT) as the decision layer in the Transfera...
The analysis of nominal data is often reduced to accumulation and description. Bayesian methods offe...
The main purpose of this article is to introduce the evidential reasoning approach, a research meth...
Modelling the interdependencies among the factors influencing human error (e.g. the common performan...
Expert opinion is increasingly being used to inform Bayesian Belief Networks, in particular to defin...
Most research on rule-based inference under uncertainty has focused on the normative validity and ef...
The goal of this paper is to compare the similarities and differences between Bayesian and belief fu...
Bayesian Belief Network (BBN) methods can be adopted for reliability analysis and real-time monitori...
The elicitation of expert opinion has associated challenges due to the quantity of information requi...
This book is an extension of the author’s first book and serves as a guide and manual on how to spec...
As a dominant method in evidential reasoning, Bayesian network has been proved powerful in discrete ...
Probabilistic Reasoning in Intelligent Systems is a complete and accessible account of the theoretic...
This paper describes an algorithmic means for inducing implication networks from empirical data samp...
AbstractInference algorithms in directed evidential networks (DEVN) obtain their efficiency by makin...
This paper reports our investigation on the problem of belief update in Bayesian networks (BN) using...
Smets proposes the Pignistic Probability Transformation (PPT) as the decision layer in the Transfera...
The analysis of nominal data is often reduced to accumulation and description. Bayesian methods offe...
The main purpose of this article is to introduce the evidential reasoning approach, a research meth...
Modelling the interdependencies among the factors influencing human error (e.g. the common performan...
Expert opinion is increasingly being used to inform Bayesian Belief Networks, in particular to defin...
Most research on rule-based inference under uncertainty has focused on the normative validity and ef...
The goal of this paper is to compare the similarities and differences between Bayesian and belief fu...
Bayesian Belief Network (BBN) methods can be adopted for reliability analysis and real-time monitori...
The elicitation of expert opinion has associated challenges due to the quantity of information requi...
This book is an extension of the author’s first book and serves as a guide and manual on how to spec...
As a dominant method in evidential reasoning, Bayesian network has been proved powerful in discrete ...
Probabilistic Reasoning in Intelligent Systems is a complete and accessible account of the theoretic...
This paper describes an algorithmic means for inducing implication networks from empirical data samp...
AbstractInference algorithms in directed evidential networks (DEVN) obtain their efficiency by makin...
This paper reports our investigation on the problem of belief update in Bayesian networks (BN) using...
Smets proposes the Pignistic Probability Transformation (PPT) as the decision layer in the Transfera...
The analysis of nominal data is often reduced to accumulation and description. Bayesian methods offe...