AbstractThe original Rough Set model is concerned primarily with algebraic properties of approximately defined sets. The Variable Precision Rough Set (VPRS) model extends the basic rough set theory to incorporate probabilistic information. The article presents a non-parametric modification of the VPRS model called the Bayesian Rough Set (BRS) model, where the set approximations are defined by using the prior probability as a reference. Mathematical properties of BRS are investigated. It is shown that the quality of BRS models can be evaluated using probabilistic gain function, which is suitable for identification and elimination of redundant attributes
In a data mining process, outlier detection aims to use the high marginality of these elements to id...
Based on Pawlaks two way approximations on Rough Sets and using thresholds G.Ganesan et al in 2004 p...
Rough set theory (RST), since its introduction in Pawlak (1982), continues to develop as an effectiv...
AbstractThe article presents a parametric Bayesian extension of the rough set model, where the set a...
AbstractProbabilistic approaches have been applied to the theory of rough set in several forms, incl...
AbstractThe article introduces the basic ideas and investigates the probabilistic version of rough s...
AbstractProbabilistic approaches have been applied to the theory of rough set in several forms, incl...
AbstractA generalized model of rough sets called variable precision model (VP-model), aimed at model...
AbstractOne of the challenges a decision maker faces in using rough sets is to choose a suitable rou...
As the original rough set model is quite sensitive to noisy data, Ziarko proposed the variable preci...
AbstractBayesian rough set model (BRSM), as the hybrid development between rough set theory and Baye...
AbstractThe article introduces the basic ideas and investigates the probabilistic version of rough s...
The Rough Set Theory (RST) was proposed by Pawlak [4] as a new mathematical approach to deal with u...
Abstract. A naive Bayesian classifier is a probabilistic classifier based on Bayesian decision theor...
Decision-theoretic rough set models are a probabilistic extension of the algebraic rough set model. ...
In a data mining process, outlier detection aims to use the high marginality of these elements to id...
Based on Pawlaks two way approximations on Rough Sets and using thresholds G.Ganesan et al in 2004 p...
Rough set theory (RST), since its introduction in Pawlak (1982), continues to develop as an effectiv...
AbstractThe article presents a parametric Bayesian extension of the rough set model, where the set a...
AbstractProbabilistic approaches have been applied to the theory of rough set in several forms, incl...
AbstractThe article introduces the basic ideas and investigates the probabilistic version of rough s...
AbstractProbabilistic approaches have been applied to the theory of rough set in several forms, incl...
AbstractA generalized model of rough sets called variable precision model (VP-model), aimed at model...
AbstractOne of the challenges a decision maker faces in using rough sets is to choose a suitable rou...
As the original rough set model is quite sensitive to noisy data, Ziarko proposed the variable preci...
AbstractBayesian rough set model (BRSM), as the hybrid development between rough set theory and Baye...
AbstractThe article introduces the basic ideas and investigates the probabilistic version of rough s...
The Rough Set Theory (RST) was proposed by Pawlak [4] as a new mathematical approach to deal with u...
Abstract. A naive Bayesian classifier is a probabilistic classifier based on Bayesian decision theor...
Decision-theoretic rough set models are a probabilistic extension of the algebraic rough set model. ...
In a data mining process, outlier detection aims to use the high marginality of these elements to id...
Based on Pawlaks two way approximations on Rough Sets and using thresholds G.Ganesan et al in 2004 p...
Rough set theory (RST), since its introduction in Pawlak (1982), continues to develop as an effectiv...