International audienceIn this paper we consider a graph clustering problem with a given number of clusters and approximate desired sizes of the clusters. One possible motivation for such task could be the problem of databases or servers allocation within several given large computational clusters, where we want related objects to share the same cluster in order to minimize latency and transaction costs. This task differs from the original community detection problem. To solve this task, we adopt some ideas from Glauber Dynamics and Label Propagation Algorithm. At the same time we consider no additional information about node labels, so the task has the nature of unsupervised learning. We propose an algorithm for the problem, show that it wo...
This paper proposes a two-step graph partitioning method to discover constrained clusters with an ob...
Clustering large data sets recently has emerged as an important area of research. The ever-increasin...
Community detection, also named as graph clustering, is essential to various graph analysis applicat...
Abstract. The most commonly used method to tackle the graph partitioning problem in practice is the ...
The stochastic block model is a classical cluster-exhibiting random graph model that has been widely...
International audienceClustering of a graph is the task of grouping its nodes in such a way that the...
Graph clustering is a fundamental computational problem with a number of applications in algorithm d...
Abstract. In this paper, we develop semi-external and external mem-ory algorithms for graph partitio...
Graphs are ubiquitous in many fields of research ranging from sociology to biology. A graph is a ver...
In this paper, we consider sparse networks consisting of a finite number of non-overlapping communit...
The stochastic block model is a classical clusterexhibiting random graph model that has been widely ...
Graph clustering is one of the key techniques to understand structures that are present in networks....
Learning the community structure of a large-scale graph is a fundamental problem in machine learning...
Les graphes sont omniprésents dans de nombreux domaines de recherche, allant de la biologie à la soc...
Graph partitioning is an essential task for scalable data management and analysis. The current parti...
This paper proposes a two-step graph partitioning method to discover constrained clusters with an ob...
Clustering large data sets recently has emerged as an important area of research. The ever-increasin...
Community detection, also named as graph clustering, is essential to various graph analysis applicat...
Abstract. The most commonly used method to tackle the graph partitioning problem in practice is the ...
The stochastic block model is a classical cluster-exhibiting random graph model that has been widely...
International audienceClustering of a graph is the task of grouping its nodes in such a way that the...
Graph clustering is a fundamental computational problem with a number of applications in algorithm d...
Abstract. In this paper, we develop semi-external and external mem-ory algorithms for graph partitio...
Graphs are ubiquitous in many fields of research ranging from sociology to biology. A graph is a ver...
In this paper, we consider sparse networks consisting of a finite number of non-overlapping communit...
The stochastic block model is a classical clusterexhibiting random graph model that has been widely ...
Graph clustering is one of the key techniques to understand structures that are present in networks....
Learning the community structure of a large-scale graph is a fundamental problem in machine learning...
Les graphes sont omniprésents dans de nombreux domaines de recherche, allant de la biologie à la soc...
Graph partitioning is an essential task for scalable data management and analysis. The current parti...
This paper proposes a two-step graph partitioning method to discover constrained clusters with an ob...
Clustering large data sets recently has emerged as an important area of research. The ever-increasin...
Community detection, also named as graph clustering, is essential to various graph analysis applicat...