Clustering a set of objects into homogeneous groups is a fundamental operation in data mining. Recently, many attentions have been put on categorical data clustering, where data objects are made up of non-numerical attributes. For categorical data clustering the rough set based approaches such as Maximum Dependency Attribute (MDA) and Maximum Significance Attribute (MSA) has outperformed their predecessor approaches like Bi-Clustering (BC), Total Roughness (TR) and Min-Min Roughness(MMR). This paper presents the limitations and issues of MDA and MSA techniques on special type of data sets where both techniques fails to select or faces difficulty in selecting their best clustering attribute. Therefore, this analysis motivates the need to com...
Motivation Many real applications such as businesses and health generate large categorical datasets ...
AbstractLots of clustering algorithms have been developed, while most of them cannot process objects...
AbstractLots of clustering algorithms have been developed, while most of them cannot process objects...
Several algorithms strategies based on Rough Set Theory (RST) have been used for the selection of at...
A few of clustering techniques for categorical data exist to group objects having similar characteri...
Clustering a set of objects into homogeneous groups is a fundamental operation in data mining. Rece...
Clustering categorical data is an integral part of data mining and has attracted much attention rece...
Clustering categorical data is an essential and integral part of data mining. In this paper, we prop...
Clustering categorical data is an essential and integral part of data mining. In this paper, we prop...
A few techniques of rough categorical data clustering exist to group objects having similar charact...
Clustering a set of data into homogeneous groups is a fundamental operation in data mining. Recently...
Clustering a set of data into homogeneous groups is a fundamental operation in data mining. Recently...
Abstract A variety of cluster analysis techniques prerequisite to cluster objects having similar cha...
Clustering a set of objects into homogeneous groups is a fundamental operation in data mining. Rece...
MotivationMany real applications such as businesses and health generate large categorical datasets w...
Motivation Many real applications such as businesses and health generate large categorical datasets ...
AbstractLots of clustering algorithms have been developed, while most of them cannot process objects...
AbstractLots of clustering algorithms have been developed, while most of them cannot process objects...
Several algorithms strategies based on Rough Set Theory (RST) have been used for the selection of at...
A few of clustering techniques for categorical data exist to group objects having similar characteri...
Clustering a set of objects into homogeneous groups is a fundamental operation in data mining. Rece...
Clustering categorical data is an integral part of data mining and has attracted much attention rece...
Clustering categorical data is an essential and integral part of data mining. In this paper, we prop...
Clustering categorical data is an essential and integral part of data mining. In this paper, we prop...
A few techniques of rough categorical data clustering exist to group objects having similar charact...
Clustering a set of data into homogeneous groups is a fundamental operation in data mining. Recently...
Clustering a set of data into homogeneous groups is a fundamental operation in data mining. Recently...
Abstract A variety of cluster analysis techniques prerequisite to cluster objects having similar cha...
Clustering a set of objects into homogeneous groups is a fundamental operation in data mining. Rece...
MotivationMany real applications such as businesses and health generate large categorical datasets w...
Motivation Many real applications such as businesses and health generate large categorical datasets ...
AbstractLots of clustering algorithms have been developed, while most of them cannot process objects...
AbstractLots of clustering algorithms have been developed, while most of them cannot process objects...