Community detection in complex networks is an important issue in network science. Several statistical measures have been proposed and widely applied to detecting the communities in various complex networks. However, due to the lack of flexibility resolution, some of them have to encounter the resolution limit and thus are not compatible with multi-scale structures of complex networks. In this paper, we investigated a statistical measure of interest for community detection, Significance [Sci. Rep. 3 (2013) 2930], and analyzed its critical behaviors based on the theoretical derivation of critical number of communities and the phase diagram in community-partition transition. It was revealed that Significance exhibits far higher resolution than...
Abstract Background Community detection algorithms are fundamental tools to uncover important featur...
Multiscale community detection algorithms can reveal the hierarchy of complex networks. However, the...
Analysis of the large amounts of data accumulated in public databanks can facilitate a more comprehe...
Community detection is an important aspect of network analysis that has far-reaching consequences, i...
Networks are useful tools to represent and analyze interactions on a large, or genome-wide scale and...
Modularity is the most widely used metric in the field of community detection for complex networks. ...
Community Detection is an interesting computational technique for the analysis of networks. This tec...
Many complex systems can be modeled as complex networks, so we can use network theory to study this ...
The identification of communities, or modules, is a common operation in the analysis of large biolog...
Biological networks catalog the complex web of interactions happening between different molecules, t...
Complex networks are ubiquitous; billions of people are connected through social networks; there is ...
International audienceThe identification of communities, or modules, is a common operation in the an...
Gene interactions can suitably be modeled as communities through weighted complex networks. However,...
Discovering communities in complex networks is essential in performing analyses, such as dynamics of...
Analysis of the large amounts of data accumulated in public databanks can facilitate a more comprehe...
Abstract Background Community detection algorithms are fundamental tools to uncover important featur...
Multiscale community detection algorithms can reveal the hierarchy of complex networks. However, the...
Analysis of the large amounts of data accumulated in public databanks can facilitate a more comprehe...
Community detection is an important aspect of network analysis that has far-reaching consequences, i...
Networks are useful tools to represent and analyze interactions on a large, or genome-wide scale and...
Modularity is the most widely used metric in the field of community detection for complex networks. ...
Community Detection is an interesting computational technique for the analysis of networks. This tec...
Many complex systems can be modeled as complex networks, so we can use network theory to study this ...
The identification of communities, or modules, is a common operation in the analysis of large biolog...
Biological networks catalog the complex web of interactions happening between different molecules, t...
Complex networks are ubiquitous; billions of people are connected through social networks; there is ...
International audienceThe identification of communities, or modules, is a common operation in the an...
Gene interactions can suitably be modeled as communities through weighted complex networks. However,...
Discovering communities in complex networks is essential in performing analyses, such as dynamics of...
Analysis of the large amounts of data accumulated in public databanks can facilitate a more comprehe...
Abstract Background Community detection algorithms are fundamental tools to uncover important featur...
Multiscale community detection algorithms can reveal the hierarchy of complex networks. However, the...
Analysis of the large amounts of data accumulated in public databanks can facilitate a more comprehe...