This paper extends the decision tree technique to an uncertain environment where the uncertainty is represented by belief functions as interpreted in the transferable belief model (TBM). This so-called belief decision tree is a new classification method adapted to uncertain data. We will be concerned with the construction of the belief decision tree from a training set where the knowledge about the instances' classes is represented by belief functions, and its use for the classification of new instances where the knowledge about the attributes' values is represented by belief functions. © 2001 Elsevier Science Inc. All rights reserved.SCOPUS: ar.jinfo:eu-repo/semantics/publishe
AbstractIn this paper, we present two classification approaches based on Rough Sets (RS) that are ab...
International audienceRough set theory and belief function theory, two popular mathematical framewor...
AbstractA primary motivation for reasoning under uncertainty is to derive decisions in the face of i...
AbstractThis paper extends the decision tree technique to an uncertain environment where the uncerta...
Abstract. Decision trees are considered as an efficient technique to express classification knowledg...
Decision trees are considered as an efficient technique to express classification knowledge and to u...
International audienceDecision trees are regarded as convenient machine learning techniques for solv...
The belief decision tree approach is a decision tree method adapted in order to handle uncertainty...
The belief decision tree (BDT) approach is a decision tree in an uncertain environment where the unc...
AbstractThe belief decision tree (BDT) approach is a decision tree in an uncertain environment where...
As well-known machine learning methods, decision trees are widely applied in classification and reco...
One of the current challenges in the field of data mining is to develop techniques to analyze uncert...
AbstractThis paper addresses the classification problem with imperfect data. More precisely, it exte...
The transferable belief model (TBM) is a model to represent quantified uncertainties based on belief...
International audienceMany real world problems and applications require to exploit incomplete, compl...
AbstractIn this paper, we present two classification approaches based on Rough Sets (RS) that are ab...
International audienceRough set theory and belief function theory, two popular mathematical framewor...
AbstractA primary motivation for reasoning under uncertainty is to derive decisions in the face of i...
AbstractThis paper extends the decision tree technique to an uncertain environment where the uncerta...
Abstract. Decision trees are considered as an efficient technique to express classification knowledg...
Decision trees are considered as an efficient technique to express classification knowledge and to u...
International audienceDecision trees are regarded as convenient machine learning techniques for solv...
The belief decision tree approach is a decision tree method adapted in order to handle uncertainty...
The belief decision tree (BDT) approach is a decision tree in an uncertain environment where the unc...
AbstractThe belief decision tree (BDT) approach is a decision tree in an uncertain environment where...
As well-known machine learning methods, decision trees are widely applied in classification and reco...
One of the current challenges in the field of data mining is to develop techniques to analyze uncert...
AbstractThis paper addresses the classification problem with imperfect data. More precisely, it exte...
The transferable belief model (TBM) is a model to represent quantified uncertainties based on belief...
International audienceMany real world problems and applications require to exploit incomplete, compl...
AbstractIn this paper, we present two classification approaches based on Rough Sets (RS) that are ab...
International audienceRough set theory and belief function theory, two popular mathematical framewor...
AbstractA primary motivation for reasoning under uncertainty is to derive decisions in the face of i...