Two dimensional contingency tables or co-occurrence matrices arise frequently in various important applications such as text analy-sis and web-log mining. As a fundamental research topic, co-clustering aims to generate a meaningful partition of the contingen-cy table to reveal hidden relationships between rows and columns. Traditional co-clustering algorithms usually produce a predefined number of flat partition of both rows and columns, which do not reveal relationship among clusters. To address this limitation, hi-erarchical co-clustering algorithms have attracted a lot of research interests recently. Although successful in various applications, the existing hierarchial co-clustering algorithms are usually based on certain heuristics and ...
International audienceWe present Coclus, a novel diagonal co-clustering algorithm which is able to e...
Heterogeneous object co-clustering has become an important research topic in data mining. In early y...
Abstract Many of the real world clustering problems arising in data mining applications are heteroge...
Two dimensional contingency tables or co-occurrence matrices arise frequently in various important a...
Abstract. Two dimensional contingency tables or co-occurrence matrices arise fre-quently in various ...
Abstract Two-dimensional contingency tables or co-occurrence matrices arise frequently in various im...
International audienceMany of the datasets encountered in statistics are two-dimensional in nature a...
Co-clustering is the simultaneous partitioning of the rows and columns of a matrix such that the blo...
This paper is accepted as a long paper with an oral presentation by the IEEE international conferenc...
Heterogeneous data co-clustering has attracted more and more attention in recent years due to its hi...
Co-clustering aims to identify block patterns in a data table, from a joint clustering of rows and c...
We present a conceptually simple method for hierarchical clustering of data called mutual informatio...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIEInternational audienceThe availability of data r...
Co-clustering is the simultaneous partitioning of the rows and columns of a matrix such that the blo...
Many of the real world clustering problems arising in data mining applications are heterogeneous in ...
International audienceWe present Coclus, a novel diagonal co-clustering algorithm which is able to e...
Heterogeneous object co-clustering has become an important research topic in data mining. In early y...
Abstract Many of the real world clustering problems arising in data mining applications are heteroge...
Two dimensional contingency tables or co-occurrence matrices arise frequently in various important a...
Abstract. Two dimensional contingency tables or co-occurrence matrices arise fre-quently in various ...
Abstract Two-dimensional contingency tables or co-occurrence matrices arise frequently in various im...
International audienceMany of the datasets encountered in statistics are two-dimensional in nature a...
Co-clustering is the simultaneous partitioning of the rows and columns of a matrix such that the blo...
This paper is accepted as a long paper with an oral presentation by the IEEE international conferenc...
Heterogeneous data co-clustering has attracted more and more attention in recent years due to its hi...
Co-clustering aims to identify block patterns in a data table, from a joint clustering of rows and c...
We present a conceptually simple method for hierarchical clustering of data called mutual informatio...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIEInternational audienceThe availability of data r...
Co-clustering is the simultaneous partitioning of the rows and columns of a matrix such that the blo...
Many of the real world clustering problems arising in data mining applications are heterogeneous in ...
International audienceWe present Coclus, a novel diagonal co-clustering algorithm which is able to e...
Heterogeneous object co-clustering has become an important research topic in data mining. In early y...
Abstract Many of the real world clustering problems arising in data mining applications are heteroge...