The importance of identifying mesoscale structures in complex networks can be hardly overestimated. So far, much attention has been devoted to detect modular and bimodular structures on binary networks. This effort has led to the definition of a framework based upon the score function called ‘surprise’, i.e. a p-value that can be assigned to any given partition of nodes. Hereby, we make a step further and extend the entire framework to the weighted case: six variants of surprise, induced by just as many variants of the hypergeometric distribution, are, thus, considered. As a result, a general, statistically grounded approach for detecting mesoscale network structures via a unified, suprise-based framework is presented. To illustrate its per...
Networks are widely used in the biological, physical, and social sciences as a concise mathematical ...
Graph theory provides a powerful framework to investigate brain functional connectivity networks and...
The modular organization of brain networks has been widely investigated using graph theoretical appr...
The importance of identifying mesoscale structures in complex networks can be hardly overestimated. ...
Detecting the presence of mesoscale structures in complex networks is of primary importance. This is...
How to determine the community structure of complex networks is an open question. It is critical to ...
Analyzing real-world networks ultimately amounts at com- paring their empirical properties with the...
We present a fast spectral algorithm for community detection in complex networks. Our method searche...
When facing the problem of reconstructing complex mesoscale network structures, it is generally beli...
Understanding a complex network's structure holds the key to understanding its function. The physics...
AbstractGraph theory provides a powerful framework to investigate brain functional connectivity netw...
A myriad of approaches have been proposed to characterise the mesoscale structure of networks - most...
Many real-world complex networks exhibit a community structure, in which the modules correspond to a...
The characterization of network community structure has profound implications in several scientific ...
rem e 30 ont lve iffeclasses, e.g. by finding a partition of the network which maximizes a quality f...
Networks are widely used in the biological, physical, and social sciences as a concise mathematical ...
Graph theory provides a powerful framework to investigate brain functional connectivity networks and...
The modular organization of brain networks has been widely investigated using graph theoretical appr...
The importance of identifying mesoscale structures in complex networks can be hardly overestimated. ...
Detecting the presence of mesoscale structures in complex networks is of primary importance. This is...
How to determine the community structure of complex networks is an open question. It is critical to ...
Analyzing real-world networks ultimately amounts at com- paring their empirical properties with the...
We present a fast spectral algorithm for community detection in complex networks. Our method searche...
When facing the problem of reconstructing complex mesoscale network structures, it is generally beli...
Understanding a complex network's structure holds the key to understanding its function. The physics...
AbstractGraph theory provides a powerful framework to investigate brain functional connectivity netw...
A myriad of approaches have been proposed to characterise the mesoscale structure of networks - most...
Many real-world complex networks exhibit a community structure, in which the modules correspond to a...
The characterization of network community structure has profound implications in several scientific ...
rem e 30 ont lve iffeclasses, e.g. by finding a partition of the network which maximizes a quality f...
Networks are widely used in the biological, physical, and social sciences as a concise mathematical ...
Graph theory provides a powerful framework to investigate brain functional connectivity networks and...
The modular organization of brain networks has been widely investigated using graph theoretical appr...