The paper addresses the problem of analysing information tables which contain objects described by both attributes and criteria, i.e. attributes with preference-ordered scales. The objects contained in those tables, representing exemplary decisions made by a decision maker or a domain expert, are usually classified into one of several classes that are also often preference-ordered. Analysis of such data using the classic rough set methodology may produce improper results, as the original rough set approach is not able to discover inconsistencies originating from consideration of typical criteria, like e.g. product quality, market share or debt ratio. The paper presents the framework for the analysis of both attributes and criteria and a ver...
In this paper, within the context of fuzzy rough set theory, we generalize the classical rough set f...
Rough set theory provides a methodology for data analysis based on the approximation of concepts in ...
In the rough-set field, the objective of attribute reduction is to regulate the variations of measur...
We consider a sorting (classification) problem in the presence of multiple attributes and criteria, ...
Abstract — Decision rules generated from reducts can fully describe a data set. We introduce a new m...
The original rough set approach proved to be very useful in dealing with inconsistency problems foll...
In rough set theory, the reduct is defined as a minimal set of attributes that partitions the tuple ...
This paper discusses induction of decision rules from data tables representing information about a s...
The aim of multicriteria decision aiding is to give the decision maker a recommendation concerning a...
ABSTRACT. The aim of multicriteria decision aiding is to give the decision maker a recommendation co...
Abstract Attribute reduction and reducts are important notions in rough set theory that can preserve...
Attribute reduction is very important in rough set-based data analysis (RSDA) because it can be used...
Attribute selection (Feature Selection) is a significant technique for data preprocessing and dimens...
Dominance-based Rough Set Approach (DRSA) has been introduced to deal with multiple criteria classif...
Since its introduction, rough set theory has demonstrated its usefulness in many applications where ...
In this paper, within the context of fuzzy rough set theory, we generalize the classical rough set f...
Rough set theory provides a methodology for data analysis based on the approximation of concepts in ...
In the rough-set field, the objective of attribute reduction is to regulate the variations of measur...
We consider a sorting (classification) problem in the presence of multiple attributes and criteria, ...
Abstract — Decision rules generated from reducts can fully describe a data set. We introduce a new m...
The original rough set approach proved to be very useful in dealing with inconsistency problems foll...
In rough set theory, the reduct is defined as a minimal set of attributes that partitions the tuple ...
This paper discusses induction of decision rules from data tables representing information about a s...
The aim of multicriteria decision aiding is to give the decision maker a recommendation concerning a...
ABSTRACT. The aim of multicriteria decision aiding is to give the decision maker a recommendation co...
Abstract Attribute reduction and reducts are important notions in rough set theory that can preserve...
Attribute reduction is very important in rough set-based data analysis (RSDA) because it can be used...
Attribute selection (Feature Selection) is a significant technique for data preprocessing and dimens...
Dominance-based Rough Set Approach (DRSA) has been introduced to deal with multiple criteria classif...
Since its introduction, rough set theory has demonstrated its usefulness in many applications where ...
In this paper, within the context of fuzzy rough set theory, we generalize the classical rough set f...
Rough set theory provides a methodology for data analysis based on the approximation of concepts in ...
In the rough-set field, the objective of attribute reduction is to regulate the variations of measur...