AbstractWe propose a new fuzzy rough set approach which, differently from most known fuzzy set extensions of rough set theory, does not use any fuzzy logical connectives (t-norm, t-conorm, fuzzy implication). As there is no rationale for a particular choice of these connectives, avoiding this choice permits to reduce the part of arbitrary in the fuzzy rough approximation. Another advantage of the new approach is that it is based on the ordinal properties of fuzzy membership degrees only. The concepts of fuzzy lower and upper approximations are thus proposed, creating a base for induction of fuzzy decision rules having syntax and semantics of gradual rules. The proposed approach to rule induction is also interesting from the viewpoint of phi...
Rough set theory has been used extensively in fields of complexity, cognitive sciences, and artifici...
Some modal decision logic languages are proposed for knowledge representation in data mining through...
2012-2013 > Academic research: refereed > Chapter in an edited book (author)Accepted ManuscriptPubli...
AbstractWe propose a new fuzzy rough set approach which, differently from most known fuzzy set exten...
In this paper, we present some new ideas for fuzzy reasoning from the viewpoint of fuzzy rough set. ...
This paper extends the study of multi-fuzzy rough sets using an implicator and a continuous t-norm a...
In this paper, we propose one method of rule induction based on fuzzy rough set. First, the consiste...
The starting point of the paper is the (well-known) observation that the classical Rough Set Theory ...
In practice, some of information systems are based on dominance relations, and values of decision at...
AbstractFuzzy set theory, soft set theory and rough set theory are mathematical tools for dealing wi...
Abstract. The rough set theory was proved of its effectiveness in deal-ing with the imprecise and am...
In this paper, we present an extension of the well-known implicator/t-norm based fuzzy rough set mod...
In this paper, we present an extension of the well-known implicator/t-norm based fuzzy rough set mod...
Rough set theory is a new method that deals with vagueness and uncertainty emphasized in decision ma...
Rough set theory has been used extensively in fields of complexity, cognitive sciences, and artifici...
Rough set theory has been used extensively in fields of complexity, cognitive sciences, and artifici...
Some modal decision logic languages are proposed for knowledge representation in data mining through...
2012-2013 > Academic research: refereed > Chapter in an edited book (author)Accepted ManuscriptPubli...
AbstractWe propose a new fuzzy rough set approach which, differently from most known fuzzy set exten...
In this paper, we present some new ideas for fuzzy reasoning from the viewpoint of fuzzy rough set. ...
This paper extends the study of multi-fuzzy rough sets using an implicator and a continuous t-norm a...
In this paper, we propose one method of rule induction based on fuzzy rough set. First, the consiste...
The starting point of the paper is the (well-known) observation that the classical Rough Set Theory ...
In practice, some of information systems are based on dominance relations, and values of decision at...
AbstractFuzzy set theory, soft set theory and rough set theory are mathematical tools for dealing wi...
Abstract. The rough set theory was proved of its effectiveness in deal-ing with the imprecise and am...
In this paper, we present an extension of the well-known implicator/t-norm based fuzzy rough set mod...
In this paper, we present an extension of the well-known implicator/t-norm based fuzzy rough set mod...
Rough set theory is a new method that deals with vagueness and uncertainty emphasized in decision ma...
Rough set theory has been used extensively in fields of complexity, cognitive sciences, and artifici...
Rough set theory has been used extensively in fields of complexity, cognitive sciences, and artifici...
Some modal decision logic languages are proposed for knowledge representation in data mining through...
2012-2013 > Academic research: refereed > Chapter in an edited book (author)Accepted ManuscriptPubli...