The community structure of complex networks reveals both their organization and hidden relationships among their constituents. Most community detection methods currently available are not deterministic, and their results typically depend on the specific random seeds, initial conditions and tie-break rules adopted for their execution. Consensus clustering is used in data analysis to generate stable results out of a set of partitions delivered by stochastic methods. Here we show that consensus clustering can be combined with any existing method in a self-consistent way, enhancing considerably both the stability and the accuracy of the resulting partitions. This framework is also particularly suitable to monitor the evolution of community stru...
A method for community detection (graph clustering) is developed by mapping the problem onto finding...
Network data sets used in:<div><br></div><div>Multiresolution Consensus Clustering in Networks, Scie...
Abstract. One of the most important problems in science is that of inferring knowledge from data. Th...
The community structure of complex networks reveals both their organization and hidden relationships...
Algorithms for community detection are usually stochastic, leading to different partitions for diffe...
Networks often exhibit structure at disparate scales. We propose a method for identifying community ...
A novel framework for consensus clustering is presented which has the ability to determine both the ...
A novel framework for consensus clustering is presented which has the ability to determine both the ...
A novel approach rooted on the notion of consensus clustering, a strategy developed for community de...
Cluster Analysis is a field of Data Mining used to extract underlying patterns in unclassified data....
A novel approach rooted on the notion of consensus clustering, a strategy developed for community de...
Graph clustering, or community detection, is the task of identifying groups of closely related objec...
International audienceThe existence of many clustering algorithms with variable performance on each ...
International audienceClustering is one of the major tasks in data mining. However, selecting an alg...
Consensus clustering is a machine learning tehnique for class discovery and clustering validation. T...
A method for community detection (graph clustering) is developed by mapping the problem onto finding...
Network data sets used in:<div><br></div><div>Multiresolution Consensus Clustering in Networks, Scie...
Abstract. One of the most important problems in science is that of inferring knowledge from data. Th...
The community structure of complex networks reveals both their organization and hidden relationships...
Algorithms for community detection are usually stochastic, leading to different partitions for diffe...
Networks often exhibit structure at disparate scales. We propose a method for identifying community ...
A novel framework for consensus clustering is presented which has the ability to determine both the ...
A novel framework for consensus clustering is presented which has the ability to determine both the ...
A novel approach rooted on the notion of consensus clustering, a strategy developed for community de...
Cluster Analysis is a field of Data Mining used to extract underlying patterns in unclassified data....
A novel approach rooted on the notion of consensus clustering, a strategy developed for community de...
Graph clustering, or community detection, is the task of identifying groups of closely related objec...
International audienceThe existence of many clustering algorithms with variable performance on each ...
International audienceClustering is one of the major tasks in data mining. However, selecting an alg...
Consensus clustering is a machine learning tehnique for class discovery and clustering validation. T...
A method for community detection (graph clustering) is developed by mapping the problem onto finding...
Network data sets used in:<div><br></div><div>Multiresolution Consensus Clustering in Networks, Scie...
Abstract. One of the most important problems in science is that of inferring knowledge from data. Th...