[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIEInternational audienceThe availability of data represented with multiple features coming from heterogeneous domains is getting more and more common in real world applications. Such data represent objects of a certain type, connected to other types of data, the features, so that the overall data schema forms a star structure of inter-relationships. Co-clustering these data involves the specification of many parameters, such as the number of clusters for the object dimension and for all the features domains. In this paper we present a novel co-clustering algorithm for heterogeneous star-structured data that is parameter-less. This means that it does not require either the number of row clust...
International audienceCo-clustering aims at computing a bi-partition that is a collection of co-clus...
International audienceCo-clustering is a data mining technique used to extract the underlying block ...
Co-clustering is a specific type of clustering that addresses the problem of simultaneously clusteri...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIEInternational audienceThe availability of data r...
Heterogeneous data co-clustering has attracted more and more attention in recent years due to its hi...
Abstract Many of the real world clustering problems arising in data mining applications are heteroge...
Heterogeneous object co-clustering has become an important research topic in data mining. In early y...
Many of the real world clustering problems arising in data mining applications are heterogeneous in ...
A star-structured interrelationship, which is a more common type in real world data, has a central o...
Two dimensional contingency tables or co-occurrence matrices arise frequently in various important a...
Model-based co-clustering can be seen as a particularly valuable extension of model-based clustering...
In recent years, data dimensionality has increasingly become a concern, leading to many parameter an...
International audienceMany of the datasets encountered in statistics are two-dimensional in nature a...
textCo-clustering is rather a recent paradigm for unsupervised data analysis, but it has become incr...
Abstract—Many real-life data are described by categorical attributes without a pre-classification. A...
International audienceCo-clustering aims at computing a bi-partition that is a collection of co-clus...
International audienceCo-clustering is a data mining technique used to extract the underlying block ...
Co-clustering is a specific type of clustering that addresses the problem of simultaneously clusteri...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIEInternational audienceThe availability of data r...
Heterogeneous data co-clustering has attracted more and more attention in recent years due to its hi...
Abstract Many of the real world clustering problems arising in data mining applications are heteroge...
Heterogeneous object co-clustering has become an important research topic in data mining. In early y...
Many of the real world clustering problems arising in data mining applications are heterogeneous in ...
A star-structured interrelationship, which is a more common type in real world data, has a central o...
Two dimensional contingency tables or co-occurrence matrices arise frequently in various important a...
Model-based co-clustering can be seen as a particularly valuable extension of model-based clustering...
In recent years, data dimensionality has increasingly become a concern, leading to many parameter an...
International audienceMany of the datasets encountered in statistics are two-dimensional in nature a...
textCo-clustering is rather a recent paradigm for unsupervised data analysis, but it has become incr...
Abstract—Many real-life data are described by categorical attributes without a pre-classification. A...
International audienceCo-clustering aims at computing a bi-partition that is a collection of co-clus...
International audienceCo-clustering is a data mining technique used to extract the underlying block ...
Co-clustering is a specific type of clustering that addresses the problem of simultaneously clusteri...