International audienceIn many applications, the expert interpretation of co-clustering is easier than for mono-dimensional clustering. Co-clustering aims at computing a bi-partition that is a collection of co-clusters: each co-cluster is a group of objects associated to a group of attributes and these associations can support interpretations. Many constrained clustering algorithms have been proposed to exploit the domain knowledge and to improve partition relevancy in the mono-dimensional case (e.g., using the so-called must-link and cannot-link constraints). Here, we consider constrained co-clustering not only for extended must-link and cannot-link constraints (i.e., both objects and attributes can be involved), but also for interval const...
Motivation: Bi-clustering extends the traditional clustering techniques by attempting to find (all) ...
none3Co-clustering has not been much exploited in biomedical informatics, despite its success in oth...
Clustering algorithms are a common method for data analysis in many science field. They have become ...
International audienceIn many applications, the expert interpretation of co-clustering is easier tha...
In many applications, the expert interpretation of co-clustering is easier than for mono-dimensional...
International audienceCo-clustering aims at computing a bi-partition that is a collection of co-clus...
This paper presents a constraint-based approach to mining bi-clusters in gene expression data. Inste...
Abstract. The huge volume of gene expression data produced by mi-croarrays and other high-throughput...
Clustering algorithms aim, by definition, at partitioning a given set of objects into a set of clust...
Many existing clustering algorithms have been used to identify coexpressed genes in gene expression ...
In this paper, we propose a new model for coherent clustering of gene expression data called reg-clu...
DNA microarray technology has made it possible to simultaneously monitor the expression levels of th...
Data clustering techniques have been applied to extract information from gene expression data for tw...
Abstract Identifying co-expressed gene clusters can provide evidence for genetic or physical interac...
Rapid development and increasing popularity of gene expression microarrays have resulted in a number...
Motivation: Bi-clustering extends the traditional clustering techniques by attempting to find (all) ...
none3Co-clustering has not been much exploited in biomedical informatics, despite its success in oth...
Clustering algorithms are a common method for data analysis in many science field. They have become ...
International audienceIn many applications, the expert interpretation of co-clustering is easier tha...
In many applications, the expert interpretation of co-clustering is easier than for mono-dimensional...
International audienceCo-clustering aims at computing a bi-partition that is a collection of co-clus...
This paper presents a constraint-based approach to mining bi-clusters in gene expression data. Inste...
Abstract. The huge volume of gene expression data produced by mi-croarrays and other high-throughput...
Clustering algorithms aim, by definition, at partitioning a given set of objects into a set of clust...
Many existing clustering algorithms have been used to identify coexpressed genes in gene expression ...
In this paper, we propose a new model for coherent clustering of gene expression data called reg-clu...
DNA microarray technology has made it possible to simultaneously monitor the expression levels of th...
Data clustering techniques have been applied to extract information from gene expression data for tw...
Abstract Identifying co-expressed gene clusters can provide evidence for genetic or physical interac...
Rapid development and increasing popularity of gene expression microarrays have resulted in a number...
Motivation: Bi-clustering extends the traditional clustering techniques by attempting to find (all) ...
none3Co-clustering has not been much exploited in biomedical informatics, despite its success in oth...
Clustering algorithms are a common method for data analysis in many science field. They have become ...