Granular Computing (GrC), a knowledge-oriented computing which covers the theory of fuzzy information granularity, rough set theory, the theory of quotient space and interval computing etc, is a way of dealing with incomplete, unreliable, uncertain fuzzy knowledge. In recent years, it is becoming one of the main study streams in Artificial Intelligence (AI). With selecting the size structure flexibly, eliminating the incompatibility between clustering results and priori knowledge, completing the clustering task effectively, cluster analysis based on GrC attracts great interest from domestic and foreign scholars. In this paper, starting from the development of GrC, firstly, the main newly achievements about clustering and GrC are researched ...
Abstract. The current research in granular computing is dominated by set-theoretic models such as ro...
The aim of this study is focusing the issue of traditional clustering algorithm subjects to data spa...
The theory of rough sets, proposed by Pawlak (1982, 1991, 1998; Pawlak and Skowron, 2007a, 2007b), o...
Granular computing has attracted many researchers as a new and rapidly growing paradigm of informati...
Granular computing is a title of methodologies, techniques, and devices that make use of granules in...
Granular computing deals with representation of information in the form of some aggregates and relat...
Granular Computing (GrC) can be considered as a common name of theories, methodologies, techniques, ...
Abstract — Granular Computing is a paradigm destined to study how to compute with granules of knowle...
A model of granular computing (GrC) is proposed by reformulating, re-interpreting, and combining res...
Data mining and knowledge discovery is described from pattern recognition point of view along with t...
In this study, the classification problem is solved from the view of granular computing. That is, th...
Rough-fuzzy granular approach in natural computing framework is considered. The concept of rough set...
AbstractPrototype Reasoning using granular objects is an important technology for knowledge discover...
Granular neural networks(GNNs) as a new calculation system structure based on Granular Computing(GrC...
Granular computing is a new intelligent computing method based on problem solving, information proce...
Abstract. The current research in granular computing is dominated by set-theoretic models such as ro...
The aim of this study is focusing the issue of traditional clustering algorithm subjects to data spa...
The theory of rough sets, proposed by Pawlak (1982, 1991, 1998; Pawlak and Skowron, 2007a, 2007b), o...
Granular computing has attracted many researchers as a new and rapidly growing paradigm of informati...
Granular computing is a title of methodologies, techniques, and devices that make use of granules in...
Granular computing deals with representation of information in the form of some aggregates and relat...
Granular Computing (GrC) can be considered as a common name of theories, methodologies, techniques, ...
Abstract — Granular Computing is a paradigm destined to study how to compute with granules of knowle...
A model of granular computing (GrC) is proposed by reformulating, re-interpreting, and combining res...
Data mining and knowledge discovery is described from pattern recognition point of view along with t...
In this study, the classification problem is solved from the view of granular computing. That is, th...
Rough-fuzzy granular approach in natural computing framework is considered. The concept of rough set...
AbstractPrototype Reasoning using granular objects is an important technology for knowledge discover...
Granular neural networks(GNNs) as a new calculation system structure based on Granular Computing(GrC...
Granular computing is a new intelligent computing method based on problem solving, information proce...
Abstract. The current research in granular computing is dominated by set-theoretic models such as ro...
The aim of this study is focusing the issue of traditional clustering algorithm subjects to data spa...
The theory of rough sets, proposed by Pawlak (1982, 1991, 1998; Pawlak and Skowron, 2007a, 2007b), o...