The study of alternative probabilistic transformation (PT) in DS theory has emerged recently as an interesting topic, especially in decision making applications. These recent studies have mainly focused on investigating various schemes for assigning both the mass of compound focal elements to each singleton in order to obtain Bayesian belief function for realworld decision making problems. In this paper, work by us also takes inspiration from both Bayesian transformation camps, with a novel evolutionary-based probabilistic transformation (EPT) to select the qualified Bayesian belief function with the maximum value of probabilistic information content (PIC) benefiting from the global optimizing capabilities of evolutionary algorithms. Verifi...
The GAMMA parallel programming model is based on the multiset datastructure. Here, a succession of c...
This paper presents new methods for probabilistic belief revi-sion and information fusion. By making...
We develop a quantitative and experimantally testable theory of evolution, based on Bayesian and Ent...
Recent studies of alternative probabilistic transformation (PT) in Dempster–Shafer (DS) theory have ...
The mapping from the belief to the probability domain is a controversial issue, whose original purpo...
AbstractThe mapping from the belief to the probability domain is a controversial issue, whose origin...
Bayesian networks are regarded as one of the essential tools to analyze causal relationship between ...
Classification is the supervised learning technique of data mining which is used to extract hidden u...
Evolutionary computation is a discipline that has been emerging for at least 40 or 50 years. All met...
Constraints occur in many application areas of interest to evolutionary computation. The area consi...
Constraints occur in many application areas of interest to evolutionary computation. The area consid...
International audienceDempster-Shafer evidence theory is widely used for approximate reasoning under...
Smets proposes the Pignistic Probability Transformation (PPT) as the decision layer in the Transfera...
This paper presents two different efficiency-enhancement techniques for probabilistic model building...
We shortly review our theoretical analysis of genetic algorithms and provide some new results. The t...
The GAMMA parallel programming model is based on the multiset datastructure. Here, a succession of c...
This paper presents new methods for probabilistic belief revi-sion and information fusion. By making...
We develop a quantitative and experimantally testable theory of evolution, based on Bayesian and Ent...
Recent studies of alternative probabilistic transformation (PT) in Dempster–Shafer (DS) theory have ...
The mapping from the belief to the probability domain is a controversial issue, whose original purpo...
AbstractThe mapping from the belief to the probability domain is a controversial issue, whose origin...
Bayesian networks are regarded as one of the essential tools to analyze causal relationship between ...
Classification is the supervised learning technique of data mining which is used to extract hidden u...
Evolutionary computation is a discipline that has been emerging for at least 40 or 50 years. All met...
Constraints occur in many application areas of interest to evolutionary computation. The area consi...
Constraints occur in many application areas of interest to evolutionary computation. The area consid...
International audienceDempster-Shafer evidence theory is widely used for approximate reasoning under...
Smets proposes the Pignistic Probability Transformation (PPT) as the decision layer in the Transfera...
This paper presents two different efficiency-enhancement techniques for probabilistic model building...
We shortly review our theoretical analysis of genetic algorithms and provide some new results. The t...
The GAMMA parallel programming model is based on the multiset datastructure. Here, a succession of c...
This paper presents new methods for probabilistic belief revi-sion and information fusion. By making...
We develop a quantitative and experimantally testable theory of evolution, based on Bayesian and Ent...