While within-cluster information is commonly utilized in most soft subspace clustering approaches in order to develop the algorithms, other important information such as between-cluster information is seldom considered for soft subspace clustering. In this study, a novel clustering technique called enhanced soft subspace clustering (ESSC) is proposed by employing both within-cluster and between-class information. First, a new optimization objective function is developed by integrating the within-class compactness and the between-cluster separation in the subspace. Based on this objective function, the corresponding update rules for clustering are then derived, followed by the development of the novel ESSC algorithm. The properties of this a...
Abstract: When clustering high dimensional data, traditional clustering methods are found to be lack...
The ability to simplify and categorize things is one of the most important elements of human thought...
Cluster Ensembles is a framework for combining multiple partitionings obtained from separate cluster...
Clustering technology has been used extensively for the analysis of gene expression data. Among vari...
Subspace clustering is increasingly recognized as a useful and accurate alternative to conventional ...
In this paper, a multiobjective evolutionary algorithm based soft subspace clustering, MOSSC, is pro...
As one of the most popular clustering techniques for high dimensional data, soft subspace clustering...
Abstract—In this paper, a multiobjective evolutionary algorithm based soft subspace clustering, MOSS...
In this paper, two novel soft subspace clustering algorithms, namely fuzzy weighting subspace cluste...
Abstract—In this paper, two novel soft subspace clustering algorithms, namely fuzzy weighting subspa...
Abstract—The measure of data reliability has recently proven useful for a number of data analysis ta...
International audienceIn this paper a new soft subspace clustering algorithm is proposed. It is an i...
Soft subspace clustering are effective clustering techniques for high dimensional datasets. In this ...
Clusters may exist in different subspaces of a multidimensional dataset. Traditional full-space clus...
The measure of data reliability has recently proven useful for a number of data analysis tasks. This...
Abstract: When clustering high dimensional data, traditional clustering methods are found to be lack...
The ability to simplify and categorize things is one of the most important elements of human thought...
Cluster Ensembles is a framework for combining multiple partitionings obtained from separate cluster...
Clustering technology has been used extensively for the analysis of gene expression data. Among vari...
Subspace clustering is increasingly recognized as a useful and accurate alternative to conventional ...
In this paper, a multiobjective evolutionary algorithm based soft subspace clustering, MOSSC, is pro...
As one of the most popular clustering techniques for high dimensional data, soft subspace clustering...
Abstract—In this paper, a multiobjective evolutionary algorithm based soft subspace clustering, MOSS...
In this paper, two novel soft subspace clustering algorithms, namely fuzzy weighting subspace cluste...
Abstract—In this paper, two novel soft subspace clustering algorithms, namely fuzzy weighting subspa...
Abstract—The measure of data reliability has recently proven useful for a number of data analysis ta...
International audienceIn this paper a new soft subspace clustering algorithm is proposed. It is an i...
Soft subspace clustering are effective clustering techniques for high dimensional datasets. In this ...
Clusters may exist in different subspaces of a multidimensional dataset. Traditional full-space clus...
The measure of data reliability has recently proven useful for a number of data analysis tasks. This...
Abstract: When clustering high dimensional data, traditional clustering methods are found to be lack...
The ability to simplify and categorize things is one of the most important elements of human thought...
Cluster Ensembles is a framework for combining multiple partitionings obtained from separate cluster...