The search for sample-variable associations is an important problem in the exploratory analysis of high dimensional data. Biclustering methods search for sample-variable associations in the form of distinguished submatrices of the data matrix. (The rows and columns of a submatrix need not be contiguous.) In this paper we propose and evaluate a statistically motivated biclustering procedure (LAS) that finds large average submatrices within a given real-valued data matrix. The procedure operates in an iterative-residual fashion, and is driven by a Bonferroni-based significance score that effectively trades off between submatrix size and average value. We examine the performance and potential utility of LAS, and compare it with a number of exi...
Biclustering or simultaneous clustering of both genes and conditions has generated considerable inte...
Many different methods exist for pattern detection in gene expression data. In contrast to classical...
Due to the increase in gene expression data sets in recent years, various data mining techniques hav...
The search for sample-variable associations is an important problem in the exploratory analysis of h...
An important step in considering of gene expression data is obtained groups of genes that have simil...
Biclustering has become a popular technique for the study of gene expression data, especially for di...
Aim of clustering of data is to analyze gene expression data. Recently, biclustering or simultaneous...
An important aspect of cancer research is the development of better tools to understand underlying c...
Microarray and beadchip are two most efficient techniques for measuring gene expression and methylat...
Biclustering or simultaneous clustering of both genes and conditions have generated considerable int...
Background: Transcriptome analysis aims at gaining insight into cellular processes through discoveri...
Biclustering or simultaneous clustering of both genes and conditions have generated consider-able in...
<div><p>A common goal in data-analysis is to sift through a large data-matrix and detect any signifi...
Thesis (Ph.D.)--University of Washington, 2018Omics technologies are among the most exciting develop...
Biclustering is becoming a popular technique for the study of gene expression data. This is mainly d...
Biclustering or simultaneous clustering of both genes and conditions has generated considerable inte...
Many different methods exist for pattern detection in gene expression data. In contrast to classical...
Due to the increase in gene expression data sets in recent years, various data mining techniques hav...
The search for sample-variable associations is an important problem in the exploratory analysis of h...
An important step in considering of gene expression data is obtained groups of genes that have simil...
Biclustering has become a popular technique for the study of gene expression data, especially for di...
Aim of clustering of data is to analyze gene expression data. Recently, biclustering or simultaneous...
An important aspect of cancer research is the development of better tools to understand underlying c...
Microarray and beadchip are two most efficient techniques for measuring gene expression and methylat...
Biclustering or simultaneous clustering of both genes and conditions have generated considerable int...
Background: Transcriptome analysis aims at gaining insight into cellular processes through discoveri...
Biclustering or simultaneous clustering of both genes and conditions have generated consider-able in...
<div><p>A common goal in data-analysis is to sift through a large data-matrix and detect any signifi...
Thesis (Ph.D.)--University of Washington, 2018Omics technologies are among the most exciting develop...
Biclustering is becoming a popular technique for the study of gene expression data. This is mainly d...
Biclustering or simultaneous clustering of both genes and conditions has generated considerable inte...
Many different methods exist for pattern detection in gene expression data. In contrast to classical...
Due to the increase in gene expression data sets in recent years, various data mining techniques hav...