In this paper, we first reviewed several biclustering methods that are used to identify the most significant clusters in gene expression data. Here we mainly focused on the SSVD(sparse SVD) method and tried a new sparse penalty named "Prenet penalty" which has been used only in factor analysis to gain sparsity. Then in the simulation study, we tried different types of generated datasets (with different sparsity and dimension) and tried 1-layer approximation then for k-layers which shows the mixed Prenet penalty is very effective for non-overlapped data. Finally, we used some real gene expression data to show the behavior of our methods.Comment: This research it still in progress and need to fix some issue
The explosion of “omics” data over the past few decades has generated an increasing need of efficien...
Abstract- Microarray technology is a powerful method for monitoring the expression level of thousand...
Motivation: In recent years, there have been various efforts to overcome the limitations of standard...
Motivation: Gene clustering and sample clustering are commonly used to find patterns in gene express...
Abstract Background Biclusteri...
<div><p>Biclustering is the simultaneous clustering of two related dimensions, for example, of indiv...
Aim of clustering of data is to analyze gene expression data. Recently, biclustering or simultaneous...
Abstract—The biclustering method can be a very useful analysis tool when some genes have multiple fu...
Motivation:During the last years, the discovering of biclusters in data is becoming more and more po...
Background. Biclustering algorithms for the analysis of high-dimensional gene expression data were p...
In DNA microarray experiments, discovering groups of genes that share similar transcriptional charac...
There are subsets of genes that have similar behavior under subsets of conditions, so we say that th...
Biclustering or simultaneous clustering of both genes and conditions has generated considerable inte...
Biclustering or simultaneous clustering of both genes and conditions have generated considerable int...
Motivation: In recent years, there have been various efforts to overcome the limitations of standard...
The explosion of “omics” data over the past few decades has generated an increasing need of efficien...
Abstract- Microarray technology is a powerful method for monitoring the expression level of thousand...
Motivation: In recent years, there have been various efforts to overcome the limitations of standard...
Motivation: Gene clustering and sample clustering are commonly used to find patterns in gene express...
Abstract Background Biclusteri...
<div><p>Biclustering is the simultaneous clustering of two related dimensions, for example, of indiv...
Aim of clustering of data is to analyze gene expression data. Recently, biclustering or simultaneous...
Abstract—The biclustering method can be a very useful analysis tool when some genes have multiple fu...
Motivation:During the last years, the discovering of biclusters in data is becoming more and more po...
Background. Biclustering algorithms for the analysis of high-dimensional gene expression data were p...
In DNA microarray experiments, discovering groups of genes that share similar transcriptional charac...
There are subsets of genes that have similar behavior under subsets of conditions, so we say that th...
Biclustering or simultaneous clustering of both genes and conditions has generated considerable inte...
Biclustering or simultaneous clustering of both genes and conditions have generated considerable int...
Motivation: In recent years, there have been various efforts to overcome the limitations of standard...
The explosion of “omics” data over the past few decades has generated an increasing need of efficien...
Abstract- Microarray technology is a powerful method for monitoring the expression level of thousand...
Motivation: In recent years, there have been various efforts to overcome the limitations of standard...