Biclustering has emerged as an important approach to the analysis of large-scale datasets. A biclustering technique identifies a subset of rows that exhibit similar patterns on a subset of columns in a data matrix. Many biclustering methods have been proposed, and most, if not all, algorithms are developed to detect regions of ‘‘coherence’ ’ patterns. These methods perform unsatisfactorily if the purpose is to identify biclusters of a constant level. This paper presents a two-step biclustering method to identify constant level biclusters for binary or quantitative data. This algorithm identifies the maximal dimensional submatrix such that the proportion of non-signals is less than a pre-specified tolerance d. The proposed method has much hi...
During the last decade various algorithms have been developed and proposed for discovering overlappi...
Abstract-Biclustering is simultaneous clustering of both rows and columns of a data matrix. A measur...
International audienceIn a matrix representing a numerical dataset, a bicluster is a submatrix whose...
Biclustering has emerged as an important approach to the analysis of large-scale datasets. A biclust...
Biclustering analysis is a useful methodology to discover the local coherent patterns hidden in a da...
Biclustering is a technique used to simultaneously cluster both the rows and columns of a data matri...
Biclustering is a commonly used type of analysis for real-valued data sets, and several algorithms h...
For a given matrix of size n × m over a finite alphabet A, a bicluster is a submatrix composed of se...
Analysis of large scale geonomics data, notably gene expression, has initially focused on clustering...
Biclustering has proved to be a powerful data analysis technique due to its wide success in various ...
A generalized motif bicluster algorithm In many application domains different clusters in data may b...
Abstract Background Biclusteri...
Biclustering algorithms refer to a distinct class of clustering algorithms that perform simultaneou...
<div><p>Biclustering is the simultaneous clustering of two related dimensions, for example, of indiv...
Bicluster analysis is an unsupervised learning method to detect homogeneous or uniquely characterize...
During the last decade various algorithms have been developed and proposed for discovering overlappi...
Abstract-Biclustering is simultaneous clustering of both rows and columns of a data matrix. A measur...
International audienceIn a matrix representing a numerical dataset, a bicluster is a submatrix whose...
Biclustering has emerged as an important approach to the analysis of large-scale datasets. A biclust...
Biclustering analysis is a useful methodology to discover the local coherent patterns hidden in a da...
Biclustering is a technique used to simultaneously cluster both the rows and columns of a data matri...
Biclustering is a commonly used type of analysis for real-valued data sets, and several algorithms h...
For a given matrix of size n × m over a finite alphabet A, a bicluster is a submatrix composed of se...
Analysis of large scale geonomics data, notably gene expression, has initially focused on clustering...
Biclustering has proved to be a powerful data analysis technique due to its wide success in various ...
A generalized motif bicluster algorithm In many application domains different clusters in data may b...
Abstract Background Biclusteri...
Biclustering algorithms refer to a distinct class of clustering algorithms that perform simultaneou...
<div><p>Biclustering is the simultaneous clustering of two related dimensions, for example, of indiv...
Bicluster analysis is an unsupervised learning method to detect homogeneous or uniquely characterize...
During the last decade various algorithms have been developed and proposed for discovering overlappi...
Abstract-Biclustering is simultaneous clustering of both rows and columns of a data matrix. A measur...
International audienceIn a matrix representing a numerical dataset, a bicluster is a submatrix whose...