Clustering only the records in a database (or data matrix) gives a global view of the data. For a detailed analysis or a local view, biclustering or co-clustering is required, involving the clustering of the records and the attributes simultaneously. In this paper, a new graph-drawing-based biclustering technique is proposed based on the crossing minimization paradigm that is shown to work for asymmetric overlapping biclusters in the presence of noise. Both simulated and real world data sets are used to demonstrate the superior performance of the new technique compared with two other conventional biclustering approaches
The search for similarities in large data sets has a very important role in many scientific fields. ...
<div><p>Biclustering is the simultaneous clustering of two related dimensions, for example, of indiv...
Biclustering involves the simultaneous clustering of objects and their attributes, thus defining loc...
Clustering only the records in a database (or data matrix) gives a global view of the data. For a de...
(For review purposes only.) Biclustering is used for discovering correlations among subsets of attri...
Biclustering is the analog of clustering on a bipartite graph. Existent methods infer biclusters thr...
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 involves the simultaneous clustering of objects and their attributes, thus defining loc...
Biclustering can be defined as the simultaneous clustering of rows and columns in a data matrix and ...
Abstract. Crossing minimization problem is a classic and very important problem in graph drawing [1]...
The biclustering, co-clustering, or subspace clustering prob-lem involves simultaneously grouping th...
Abstract. Biclustering, which can be defined as the simultaneous clus-tering of rows and columns in ...
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...
The search for similarities in large data sets has a very important role in many scientific fields. ...
<div><p>Biclustering is the simultaneous clustering of two related dimensions, for example, of indiv...
Biclustering involves the simultaneous clustering of objects and their attributes, thus defining loc...
Clustering only the records in a database (or data matrix) gives a global view of the data. For a de...
(For review purposes only.) Biclustering is used for discovering correlations among subsets of attri...
Biclustering is the analog of clustering on a bipartite graph. Existent methods infer biclusters thr...
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 involves the simultaneous clustering of objects and their attributes, thus defining loc...
Biclustering can be defined as the simultaneous clustering of rows and columns in a data matrix and ...
Abstract. Crossing minimization problem is a classic and very important problem in graph drawing [1]...
The biclustering, co-clustering, or subspace clustering prob-lem involves simultaneously grouping th...
Abstract. Biclustering, which can be defined as the simultaneous clus-tering of rows and columns in ...
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...
The search for similarities in large data sets has a very important role in many scientific fields. ...
<div><p>Biclustering is the simultaneous clustering of two related dimensions, for example, of indiv...
Biclustering involves the simultaneous clustering of objects and their attributes, thus defining loc...