One main assumption in the theory of rough sets applied to information tables is that the elements that exhibit the same information are indiscernible (similar) and form blocks that can be understood as elementary granules of knowledge about the universe. We propose a variant of this concept defining a measure of similarity between the elements of the universe in order to consider that two objects can be indiscernible even though they do not share all the attribute values because the knowledge is partial or uncertain. The set of similarities define a matrix of a fuzzy relation satisfying reflexivity and symmetry but transitivity thus a partition of the universe is not attained. This problem can be solved calculating its transitive closure w...
Abstract: Information systems are often incomplete in object world. This paper puts forward a new ro...
This paper proposes to enhance similarity-based classification by virtual attributes from imperfect ...
This paper proposes rough set models with three different level knowledge granules in incomplete inf...
One main assumption in the theory of rough sets applied to information tables is that the elements t...
Abstract:- In this paper, two similarity measures are proposed: one for the similarity between rough...
Pawlak’s indiscernibility relation (which is an equivalence relation) represents a limit of our know...
Based on the available information in many cases it can happen that two objects cannot be distinguis...
AbstractWe introduce a parametric family of cardinality-based similarity measures for ordinary sets ...
Abstract—Rough set theory is a popular and powerful machine learning tool. It is especially suitable...
This paper proposes new definitions of lower and upper approximations, which are basic concepts of t...
The roughness and similarity measure for two different information in the same universal set is usef...
Rough set theory was proposed by Pawlak Z. and is well used in the area of data mining. The main rol...
Abstract. In this paper we focus upon a comparison of some generalized rough approximations of sets,...
Abstract — Both rough sets theory and vague sets theory are emerging as powerful tool for managing u...
This paper extends and generalizes the approximations of fuzzy rough sets dealing with fuzzy coverin...
Abstract: Information systems are often incomplete in object world. This paper puts forward a new ro...
This paper proposes to enhance similarity-based classification by virtual attributes from imperfect ...
This paper proposes rough set models with three different level knowledge granules in incomplete inf...
One main assumption in the theory of rough sets applied to information tables is that the elements t...
Abstract:- In this paper, two similarity measures are proposed: one for the similarity between rough...
Pawlak’s indiscernibility relation (which is an equivalence relation) represents a limit of our know...
Based on the available information in many cases it can happen that two objects cannot be distinguis...
AbstractWe introduce a parametric family of cardinality-based similarity measures for ordinary sets ...
Abstract—Rough set theory is a popular and powerful machine learning tool. It is especially suitable...
This paper proposes new definitions of lower and upper approximations, which are basic concepts of t...
The roughness and similarity measure for two different information in the same universal set is usef...
Rough set theory was proposed by Pawlak Z. and is well used in the area of data mining. The main rol...
Abstract. In this paper we focus upon a comparison of some generalized rough approximations of sets,...
Abstract — Both rough sets theory and vague sets theory are emerging as powerful tool for managing u...
This paper extends and generalizes the approximations of fuzzy rough sets dealing with fuzzy coverin...
Abstract: Information systems are often incomplete in object world. This paper puts forward a new ro...
This paper proposes to enhance similarity-based classification by virtual attributes from imperfect ...
This paper proposes rough set models with three different level knowledge granules in incomplete inf...