Many methods have been proposed for community detection in networks. Some of the most promising are methods based on statistical inference, which rest on solid mathematical foundations and return excellent results in practice. In this paper we show that two of the most widely used inference methods can be mapped directly onto versions of the standard minimum-cut graph partitioning problem, which allows us to apply any of the many well-understood partitioning algorithms to the solution of community detection problems. We illustrate the approach by adapting the Laplacian spectral partitioning method to perform community inference, testing the resulting algorithm on a range of examples, including computer-generated and real-world networks. Bot...
Community detection, the decomposition of a graph into essential building blocks, has been a core re...
Community detection, the decomposition of a graph into essential building blocks, has been a core re...
Community detection in large networks through the methods based on the statistical inference model c...
Networks can be used to model various aspects of our lives as well as relations among many real-worl...
Community detection in bipartite networks is a popular topic. Two widely used methods to capture com...
Community detection is of great value for complex networks in understanding their inherent law and p...
The characterization of network community structure has profound implications in several scientific ...
The characterization of network community structure has profound implications in several scien-tific...
Graph partitioning, or community detection, has been widely investigated in network science. Yet, th...
The community detection problem in networks consists of determining a clustering of related vertices...
The community structure of a complex network can be determined by finding the partitioning of its n...
Networks are abstract representations of relationships between a set of entities. As such they can b...
Networks are abstract representations of relationships between a set of entities. As such they can b...
Community detection in large networks through the methods based on the statistical inference model c...
Community detection, the decomposition of a graph into essential building blocks, has been a core re...
Community detection, the decomposition of a graph into essential building blocks, has been a core re...
Community detection, the decomposition of a graph into essential building blocks, has been a core re...
Community detection in large networks through the methods based on the statistical inference model c...
Networks can be used to model various aspects of our lives as well as relations among many real-worl...
Community detection in bipartite networks is a popular topic. Two widely used methods to capture com...
Community detection is of great value for complex networks in understanding their inherent law and p...
The characterization of network community structure has profound implications in several scientific ...
The characterization of network community structure has profound implications in several scien-tific...
Graph partitioning, or community detection, has been widely investigated in network science. Yet, th...
The community detection problem in networks consists of determining a clustering of related vertices...
The community structure of a complex network can be determined by finding the partitioning of its n...
Networks are abstract representations of relationships between a set of entities. As such they can b...
Networks are abstract representations of relationships between a set of entities. As such they can b...
Community detection in large networks through the methods based on the statistical inference model c...
Community detection, the decomposition of a graph into essential building blocks, has been a core re...
Community detection, the decomposition of a graph into essential building blocks, has been a core re...
Community detection, the decomposition of a graph into essential building blocks, has been a core re...
Community detection in large networks through the methods based on the statistical inference model c...