International audienceLarge datasets with interactions between objects are common to numerous scientific fields including the social sciences and biology, as well as being a feature of specific phenomena such as the internet. The interactions naturally define a graph, and a common way of exploring and summarizing such datasets is graph clustering. Most techniques for clustering graph vertices use only the topology of connections, while ignoring information about the vertices’ features. In this paper we provide a clustering algorithm that harnesses both types of data, based on a statistical model with a latent structure characterizing each vertex both by a vector of features and by its connectivity. We perform simulations to compare our algo...
15 pagesNational audienceThis paper deals with the analysis and the visualization of large graphs. O...
Clustering is a fundamental property of complex networks and it is the mathematical expression of a ...
International audienceWe present a novel extension of watershed cuts to hyper-graphs, allowing the c...
Abstract: Large datasets with interactions between objects are common to numerous scientific fields ...
International audienceIf the clustering task is widely studied both in graph clustering and in non s...
International audienceIn this paper, we present different combined cluster- ing methods and we evalu...
International audienceRepresentation learning is a central problem of Attributed Networks data analy...
International audienceClustering a graph, i.e., assigning its nodes to groups, is an important opera...
International audienceClustering a graph, i.e., assigning its nodes to groups, is an important opera...
Abstract—We study the problem of clustering probabilistic graphs. Similar to the problem of clusteri...
Abstract: We [5, 6] have recently investigated several families of clustering algorithms. In this pa...
Graph clustering is an important task in data mining and pattern recognition. With the rapid develop...
International audienceClustering a graph, i.e., assigning its nodes to groups, is an important opera...
A current challenge in graph clustering is to tackle the issue of complex networks, i.e, graphs with...
Graph clustering is an important technique to understand the relationships between the vertices in a...
15 pagesNational audienceThis paper deals with the analysis and the visualization of large graphs. O...
Clustering is a fundamental property of complex networks and it is the mathematical expression of a ...
International audienceWe present a novel extension of watershed cuts to hyper-graphs, allowing the c...
Abstract: Large datasets with interactions between objects are common to numerous scientific fields ...
International audienceIf the clustering task is widely studied both in graph clustering and in non s...
International audienceIn this paper, we present different combined cluster- ing methods and we evalu...
International audienceRepresentation learning is a central problem of Attributed Networks data analy...
International audienceClustering a graph, i.e., assigning its nodes to groups, is an important opera...
International audienceClustering a graph, i.e., assigning its nodes to groups, is an important opera...
Abstract—We study the problem of clustering probabilistic graphs. Similar to the problem of clusteri...
Abstract: We [5, 6] have recently investigated several families of clustering algorithms. In this pa...
Graph clustering is an important task in data mining and pattern recognition. With the rapid develop...
International audienceClustering a graph, i.e., assigning its nodes to groups, is an important opera...
A current challenge in graph clustering is to tackle the issue of complex networks, i.e, graphs with...
Graph clustering is an important technique to understand the relationships between the vertices in a...
15 pagesNational audienceThis paper deals with the analysis and the visualization of large graphs. O...
Clustering is a fundamental property of complex networks and it is the mathematical expression of a ...
International audienceWe present a novel extension of watershed cuts to hyper-graphs, allowing the c...