In this paper, we extend Smets' transferable belief model (TBM) with probabilistic priors. Our first motivation for the extension is about evidential reasoning when the underlying prior knowledge base is Bayesian. We extend standard Dempster models with prior probabilities to represent beliefs and distinguish between two types of induced mass functions on an extended Dempster model: one for believing and the other essentially for decision-making. There is a natural correspondence between these two mass functions. In the extended model, we propose two conditioning rules for evidential reasoning with probabilistic knowledge base. Our second motivation is about the partial dissociation of betting at the pignistic level from believing at the cr...
A large body of work has demonstrated the utility of the Bayesian framework for capturing inference ...
A large body of work has demonstrated the utility of the Bayesian framework for capturing inference ...
A large body of work has demonstrated the utility of the Bayesian framework for capturing inference ...
AbstractIn this paper, we propose the plausibility transformation method for translating Dempster–Sh...
This 12-pp paper is extracted from a longer unpublished working paper: "On Transforming Belief Funct...
This 12-pp paper is extracted from a longer unpublished working paper: "On Transforming Belief Funct...
In this paper, we propose the plausibility transformation method for translating Dempster-Shafer (D-...
In this paper, we propose the plausibility transformation method for translating Dempster-Shafer (D-...
AbstractIn the transferable belief model (TBM), pignistic probabilities are used for decision making...
AbstractThis paper extends the theory of belief functions by introducing new concepts and techniques...
Smets proposes the Pignistic Probability Transformation (PPT) as the decision layer in the Transfera...
AbstractSmets and Kennes have claimed that the transferable belief model, a decision and inference p...
Abstract: Several mathematical models have been proposed for the modelling of someone's degrees...
In response to reviewer comments on this paper, we have written a shorter and more focused paper: "O...
In response to reviewer comments on this paper, we have written a shorter and more focused paper: "O...
A large body of work has demonstrated the utility of the Bayesian framework for capturing inference ...
A large body of work has demonstrated the utility of the Bayesian framework for capturing inference ...
A large body of work has demonstrated the utility of the Bayesian framework for capturing inference ...
AbstractIn this paper, we propose the plausibility transformation method for translating Dempster–Sh...
This 12-pp paper is extracted from a longer unpublished working paper: "On Transforming Belief Funct...
This 12-pp paper is extracted from a longer unpublished working paper: "On Transforming Belief Funct...
In this paper, we propose the plausibility transformation method for translating Dempster-Shafer (D-...
In this paper, we propose the plausibility transformation method for translating Dempster-Shafer (D-...
AbstractIn the transferable belief model (TBM), pignistic probabilities are used for decision making...
AbstractThis paper extends the theory of belief functions by introducing new concepts and techniques...
Smets proposes the Pignistic Probability Transformation (PPT) as the decision layer in the Transfera...
AbstractSmets and Kennes have claimed that the transferable belief model, a decision and inference p...
Abstract: Several mathematical models have been proposed for the modelling of someone's degrees...
In response to reviewer comments on this paper, we have written a shorter and more focused paper: "O...
In response to reviewer comments on this paper, we have written a shorter and more focused paper: "O...
A large body of work has demonstrated the utility of the Bayesian framework for capturing inference ...
A large body of work has demonstrated the utility of the Bayesian framework for capturing inference ...
A large body of work has demonstrated the utility of the Bayesian framework for capturing inference ...