Biclustering refers to the problem of simultaneously clustering the rows and columns of a given data matrix, with the goal of obtaining submatrices where the selected rows present a coherent behaviour in the selected columns, and vice-versa. To face this intrinsically difficult problem, we propose a novel generative model, where biclustering is approached from a sparse low-rank matrix factorization perspective. The main idea is to design a probabilistic model describing the factorization of a given data matrix in two other matrices, from which information about rows and columns belonging to the sought for biclusters can be obtained. One crucial ingredient in the proposed model is the use of a spike and slab sparsity inducing prior, thus we ...
Matrix tri-factorization subject to binary constraints is a versatile and powerful framework for the...
Sparse singular value decomposition (SSVD) is proposed as a new exploratory analysis tool for biclus...
The search for similarities in large data sets has a very important role in many scientific fields. ...
<div><p>We consider the task of simultaneously clustering the rows and columns of a large transposab...
Biclustering is a technique used to simultaneously cluster both the rows and columns of a data matri...
Biclustering, which can be defined as the simultaneous clustering of rows and columns in a data matr...
Biclustering represents an intrinsically complex problem, where the aim is to perform a simultaneous...
Abstract. Biclustering, which can be defined as the simultaneous clus-tering of rows and columns in ...
The biclustering, co-clustering, or subspace clustering prob-lem involves simultaneously grouping th...
Biclustering is the analog of clustering on a bipartite graph. Existent methods infer biclusters thr...
Biclustering can be defined as the simultaneous clustering of rows and columns in a data matrix and ...
Biclustering, which can be defined as the simultaneous clustering of rows and columns in a data matr...
Biclustering has emerged as an important approach to the analysis of large-scale datasets. A biclust...
<div><p>Biclustering is the simultaneous clustering of two related dimensions, for example, of indiv...
Biclustering has emerged as an important approach to the analysis of large-scale datasets. A biclust...
Matrix tri-factorization subject to binary constraints is a versatile and powerful framework for the...
Sparse singular value decomposition (SSVD) is proposed as a new exploratory analysis tool for biclus...
The search for similarities in large data sets has a very important role in many scientific fields. ...
<div><p>We consider the task of simultaneously clustering the rows and columns of a large transposab...
Biclustering is a technique used to simultaneously cluster both the rows and columns of a data matri...
Biclustering, which can be defined as the simultaneous clustering of rows and columns in a data matr...
Biclustering represents an intrinsically complex problem, where the aim is to perform a simultaneous...
Abstract. Biclustering, which can be defined as the simultaneous clus-tering of rows and columns in ...
The biclustering, co-clustering, or subspace clustering prob-lem involves simultaneously grouping th...
Biclustering is the analog of clustering on a bipartite graph. Existent methods infer biclusters thr...
Biclustering can be defined as the simultaneous clustering of rows and columns in a data matrix and ...
Biclustering, which can be defined as the simultaneous clustering of rows and columns in a data matr...
Biclustering has emerged as an important approach to the analysis of large-scale datasets. A biclust...
<div><p>Biclustering is the simultaneous clustering of two related dimensions, for example, of indiv...
Biclustering has emerged as an important approach to the analysis of large-scale datasets. A biclust...
Matrix tri-factorization subject to binary constraints is a versatile and powerful framework for the...
Sparse singular value decomposition (SSVD) is proposed as a new exploratory analysis tool for biclus...
The search for similarities in large data sets has a very important role in many scientific fields. ...