Most algorithms to detect communities in networks typically work without any information on the cluster structure to be found, as one has no a priori knowledge of it, in general. Not surprisingly, knowing some features of the unknown partition could help its identification, yielding an improvement of the performance of the method. Here we show that, if the number of clusters was known beforehand, standard methods, like modularity optimization, would considerably gain in accuracy, mitigating the severe resolution bias that undermines the reliability of the results of the original unconstrained version. The number of clusters can be inferred from the spectra of the recently introduced nonbacktracking and flow matrices, even in benchmark graph...
Traditional spectral clustering methods cannot naturally learn the number of communities in a networ...
Complex networks such as social networks and biological networks represent complex systems in the re...
Abstract. The identification of community structures is essential for characterizing real networks f...
Most algorithms to detect communities in networks typically work without any information on the clus...
A network is said to exhibit community structure if the nodes of the network can be easily grouped i...
The identification of modular structures is essential for characterizing real networks formed by a m...
The community structure of a complex network can be determined by finding the partitioning of its n...
The characterization of network community structure has profound implications in several scientific ...
How to determine the community structure of complex networks is an open question. It is critical to ...
Many social networks and complex systems are found to be naturally divided into clusters of densely ...
Modularity maximization has been one of the most widely used approaches in the last decade for disco...
The community detection problem in networks consists of determining a clustering of related vertices...
Some studies on networks require to isolate groups of elements, known as Com-munities. Some examples...
Many complex systems can be modeled as complex networks, so we can use network theory to study this ...
Determining the structure of large and complex networks is a problem that has stirred great interest...
Traditional spectral clustering methods cannot naturally learn the number of communities in a networ...
Complex networks such as social networks and biological networks represent complex systems in the re...
Abstract. The identification of community structures is essential for characterizing real networks f...
Most algorithms to detect communities in networks typically work without any information on the clus...
A network is said to exhibit community structure if the nodes of the network can be easily grouped i...
The identification of modular structures is essential for characterizing real networks formed by a m...
The community structure of a complex network can be determined by finding the partitioning of its n...
The characterization of network community structure has profound implications in several scientific ...
How to determine the community structure of complex networks is an open question. It is critical to ...
Many social networks and complex systems are found to be naturally divided into clusters of densely ...
Modularity maximization has been one of the most widely used approaches in the last decade for disco...
The community detection problem in networks consists of determining a clustering of related vertices...
Some studies on networks require to isolate groups of elements, known as Com-munities. Some examples...
Many complex systems can be modeled as complex networks, so we can use network theory to study this ...
Determining the structure of large and complex networks is a problem that has stirred great interest...
Traditional spectral clustering methods cannot naturally learn the number of communities in a networ...
Complex networks such as social networks and biological networks represent complex systems in the re...
Abstract. The identification of community structures is essential for characterizing real networks f...