International audienceClustering of a graph is the task of grouping its nodes in such a way that the nodes within the same cluster are well connected, but they are less connected to nodes in different clusters. In this paper we propose a clustering metric based on the random walks' properties to evaluate the quality of a graph clustering. We also propose a randomized algorithm that identifies a locally optimal clustering of the graph according to the metric defined. The algorithm is intrinsically distributed and asynchronous. If the graph represents an actual network where nodes have computing capabilities, each node can determine its own cluster relying only on local communications. We show that the size of clusters can be adapted to the a...
Part 6: AlgorithmsInternational audienceVery fast growth of empirical graphs demands clustering algo...
Graph clustering is a very common problem that arise in various fields; e.g., social science, comput...
This dissertation studies two important algorithmic problems on networks : graph diffusion and clust...
Abstract—Clustering of a graph is the task of grouping its nodes in such a way that the nodes within...
The problem of graph clustering is a central optimization problem with various applications in numer...
The problem of graph clustering is a central optimization problem with various applications in numer...
The community structure of complex networks reveals hidden relationships in the organization of thei...
Graph clustering, also often referred to as network community detection, is an unsupervised learning...
International audienceMany real world systems can be modeled as networks or graphs. Clustering algor...
Graph clustering is a fundamental computational problem with a number of applications in algorithm d...
6 pagesInternational audienceClustering methods usually require to know the best number of clusters,...
6 pagesInternational audienceClustering methods usually require to know the best number of clusters,...
The community structure of complex networks reveals hidden relationships in the organization of thei...
Clustering networks play a key role in many scientific fields, from Biology to Sociology and Compute...
Graph clustering is an important technique to understand the relationships between the vertices in a...
Part 6: AlgorithmsInternational audienceVery fast growth of empirical graphs demands clustering algo...
Graph clustering is a very common problem that arise in various fields; e.g., social science, comput...
This dissertation studies two important algorithmic problems on networks : graph diffusion and clust...
Abstract—Clustering of a graph is the task of grouping its nodes in such a way that the nodes within...
The problem of graph clustering is a central optimization problem with various applications in numer...
The problem of graph clustering is a central optimization problem with various applications in numer...
The community structure of complex networks reveals hidden relationships in the organization of thei...
Graph clustering, also often referred to as network community detection, is an unsupervised learning...
International audienceMany real world systems can be modeled as networks or graphs. Clustering algor...
Graph clustering is a fundamental computational problem with a number of applications in algorithm d...
6 pagesInternational audienceClustering methods usually require to know the best number of clusters,...
6 pagesInternational audienceClustering methods usually require to know the best number of clusters,...
The community structure of complex networks reveals hidden relationships in the organization of thei...
Clustering networks play a key role in many scientific fields, from Biology to Sociology and Compute...
Graph clustering is an important technique to understand the relationships between the vertices in a...
Part 6: AlgorithmsInternational audienceVery fast growth of empirical graphs demands clustering algo...
Graph clustering is a very common problem that arise in various fields; e.g., social science, comput...
This dissertation studies two important algorithmic problems on networks : graph diffusion and clust...