Clustering is a fundamental problem in data science, yet, the variety of clustering methods and their sensitivity to parameters make clustering hard. To analyze the stability of a given clustering algorithm while varying its parameters, and to compare clusters yielded by different algorithms, several comparison schemes based on matchings, information theory and various indices (Rand, Jaccard) have been developed. We go beyond these by providing a novel class of methods computing meta-clusters within each clustering– a meta-cluster is a group of clusters, together with a matching between these.Let the intersection graph of two clusterings be the edge-weighted bipartite graph in which the nodes represent the clusters, the edges represent the ...
We consider the following clustering problem: we have a complete graph on n vertices (items), where ...
We consider the following clustering problem: we have a complete graph on n vertices (items), where ...
Despite of the large number of algorithms developed for clustering, the study on comparing clusterin...
International audienceClustering is a fundamental problem in data science, yet, the variety of clust...
Clustering is a fundamental problem in data science, yet, the variety of clustering methods and thei...
National audienceLe clustering est une tâche essentielle en analyse de données. La variété des métho...
National audienceLe clustering est une tâche essentielle en analyse de données. La variété des métho...
National audienceLe clustering est une tâche essentielle en analyse de données. La variété des métho...
National audienceLe clustering est une tâche essentielle en analyse de données. La variété des métho...
We study clustering over multiple graphs- each encoding a distinct set of similarity relationships (...
AbstractWe consider the problem of clustering a collection of elements based on pairwise judgments o...
AbstractGiven a graph G=(X,U), the problem dealt within this paper consists in partitioning X into a...
We consider the following clustering problem: we have a complete graph on vertices (items), where e...
Abstract. We consider the following clustering problem: we have a complete graph on n vertices (item...
We consider the following clustering problem: we have a complete graph on n vertices (items), where ...
We consider the following clustering problem: we have a complete graph on n vertices (items), where ...
We consider the following clustering problem: we have a complete graph on n vertices (items), where ...
Despite of the large number of algorithms developed for clustering, the study on comparing clusterin...
International audienceClustering is a fundamental problem in data science, yet, the variety of clust...
Clustering is a fundamental problem in data science, yet, the variety of clustering methods and thei...
National audienceLe clustering est une tâche essentielle en analyse de données. La variété des métho...
National audienceLe clustering est une tâche essentielle en analyse de données. La variété des métho...
National audienceLe clustering est une tâche essentielle en analyse de données. La variété des métho...
National audienceLe clustering est une tâche essentielle en analyse de données. La variété des métho...
We study clustering over multiple graphs- each encoding a distinct set of similarity relationships (...
AbstractWe consider the problem of clustering a collection of elements based on pairwise judgments o...
AbstractGiven a graph G=(X,U), the problem dealt within this paper consists in partitioning X into a...
We consider the following clustering problem: we have a complete graph on vertices (items), where e...
Abstract. We consider the following clustering problem: we have a complete graph on n vertices (item...
We consider the following clustering problem: we have a complete graph on n vertices (items), where ...
We consider the following clustering problem: we have a complete graph on n vertices (items), where ...
We consider the following clustering problem: we have a complete graph on n vertices (items), where ...
Despite of the large number of algorithms developed for clustering, the study on comparing clusterin...