The measure of data reliability has recently proven useful for a number of data analysis tasks. This paper extends the underlying metric to a new problem of soft subspace clustering. The concept of subspace clustering has been increasingly recognized as an effective alternative to conventional algorithms (which search for clusters without differentiating the significance of different data attributes). While a large number of crisp subspace approaches have been proposed, only a handful of soft counterparts are developed with the common goal of acquiring the optimal cluster-specific dimension weights. Most soft subspace clustering methods work based on the exploitation of $k$-means and greatly rely on the iteratively disclosed cluster centers...
Abstract: When clustering high dimensional data, traditional clustering methods are found to be lack...
Abstract Background A potential benefit of profiling ...
Objective: Clustering algorithms may be applied to the analysis of DNA microarray data to identify ...
The measure of data reliability has recently proven useful for a number of data analysis tasks. This...
Abstract—The measure of data reliability has recently proven useful for a number of data analysis ta...
Subspace clustering is increasingly recognized as a useful and accurate alternative to conventional ...
While within-cluster information is commonly utilized in most soft subspace clustering approaches in...
Clustering technology has been used extensively for the analysis of gene expression data. Among vari...
Motivation: Discovering new subclasses of pathologies and expression signatures related to specific...
Abstract: We assess the robustness of partitional clustering algorithms applied to gene expression d...
Clustering methods have led to a number of important discoveries in bioinformatics and beyond. A maj...
We assess the robustness of partitional clustering algorithms applied to gene expression data. A num...
We present a new R package for the assessment of the reliability of clusters discovered in high dime...
Soft subspace clustering are effective clustering techniques for high dimensional datasets. In this ...
The progress in microarray technology is evident and huge amounts of gene expression data are curren...
Abstract: When clustering high dimensional data, traditional clustering methods are found to be lack...
Abstract Background A potential benefit of profiling ...
Objective: Clustering algorithms may be applied to the analysis of DNA microarray data to identify ...
The measure of data reliability has recently proven useful for a number of data analysis tasks. This...
Abstract—The measure of data reliability has recently proven useful for a number of data analysis ta...
Subspace clustering is increasingly recognized as a useful and accurate alternative to conventional ...
While within-cluster information is commonly utilized in most soft subspace clustering approaches in...
Clustering technology has been used extensively for the analysis of gene expression data. Among vari...
Motivation: Discovering new subclasses of pathologies and expression signatures related to specific...
Abstract: We assess the robustness of partitional clustering algorithms applied to gene expression d...
Clustering methods have led to a number of important discoveries in bioinformatics and beyond. A maj...
We assess the robustness of partitional clustering algorithms applied to gene expression data. A num...
We present a new R package for the assessment of the reliability of clusters discovered in high dime...
Soft subspace clustering are effective clustering techniques for high dimensional datasets. In this ...
The progress in microarray technology is evident and huge amounts of gene expression data are curren...
Abstract: When clustering high dimensional data, traditional clustering methods are found to be lack...
Abstract Background A potential benefit of profiling ...
Objective: Clustering algorithms may be applied to the analysis of DNA microarray data to identify ...