In this paper, we present a generative model for co-clustering and develop algorithms based on the mean field approximation for the corresponding modeling problem. These algorithms can be viewed as generalizations of the traditional model-based clustering; they extend hard co-clustering algorithms such as Bregman co-clustering to include soft assignments. We show empirically that these model-based algorithms offer better performance than their hard-assignment counterparts, especially with increasing problem complexity
Co-clustering is the simultaneous partitioning of the rows and columns of a matrix such that the blo...
We present a new multilevel method for hierarchical co-clustering. The fast multilevel co-clustering...
Co-clustering (also known as biclustering), is an important extension of cluster analysis since it a...
Cluster or co-cluster analyses are important tools in a variety of scientific areas. The introductio...
Model-based co-clustering can be seen as a particularly valuable extension of model-based clustering...
International audienceCo-clustering is more useful than one-sided clustering when dealing with high ...
Co-clustering is the simultaneous partitioning of the rows and columns of a matrix such that the blo...
Simultaneous clustering of rows and columns, usually designated by bi-clustering, coclustering or bl...
Clustering problems often involve datasets where only a part of the data is relevant to the problem ...
The simultaneous grouping of rows and columns is an important technique that is increasingly used in...
International audienceA model-based co-clustering algorithm for ordinal data is presented. This algo...
textCo-clustering is rather a recent paradigm for unsupervised data analysis, but it has become incr...
Co-clustering aims to identify block patterns in a data table, from a joint clustering of rows and c...
Clustering, without a doubt, is a dominating area in data mining and machine learning field. Due to...
Simultaneous clustering of rows and columns, usually designated by bi-clustering, co-clustering or b...
Co-clustering is the simultaneous partitioning of the rows and columns of a matrix such that the blo...
We present a new multilevel method for hierarchical co-clustering. The fast multilevel co-clustering...
Co-clustering (also known as biclustering), is an important extension of cluster analysis since it a...
Cluster or co-cluster analyses are important tools in a variety of scientific areas. The introductio...
Model-based co-clustering can be seen as a particularly valuable extension of model-based clustering...
International audienceCo-clustering is more useful than one-sided clustering when dealing with high ...
Co-clustering is the simultaneous partitioning of the rows and columns of a matrix such that the blo...
Simultaneous clustering of rows and columns, usually designated by bi-clustering, coclustering or bl...
Clustering problems often involve datasets where only a part of the data is relevant to the problem ...
The simultaneous grouping of rows and columns is an important technique that is increasingly used in...
International audienceA model-based co-clustering algorithm for ordinal data is presented. This algo...
textCo-clustering is rather a recent paradigm for unsupervised data analysis, but it has become incr...
Co-clustering aims to identify block patterns in a data table, from a joint clustering of rows and c...
Clustering, without a doubt, is a dominating area in data mining and machine learning field. Due to...
Simultaneous clustering of rows and columns, usually designated by bi-clustering, co-clustering or b...
Co-clustering is the simultaneous partitioning of the rows and columns of a matrix such that the blo...
We present a new multilevel method for hierarchical co-clustering. The fast multilevel co-clustering...
Co-clustering (also known as biclustering), is an important extension of cluster analysis since it a...