Researchers use community-detection algorithms to reveal large-scale organization in biological and social networks, but community detection is useful only if the communities are significant and not a result of noisy data. To assess the statistical significance of the network communities, or the robustness of the detected structure, one approach is to perturb the network structure by removing links and measure how much the communities change. However, perturbing sparse networks is challenging because they are inherently sensitive; they shatter easily if links are removed. Here we propose a simple method to perturb sparse networks and assess the significance of their communities. We generate resampled networks by adding extra links based on ...
Community detection is the process of assigning nodes and links in significant communities (e.g. clu...
A common and important problem arising in the study of net-works is how to divide the vertices of a ...
Community detection in complex networks is an important issue in network science. Several statistica...
Researchers use community-detection algorithms to reveal large-scale organization in biological and ...
Researchers use community-detection algorithms to reveal large-scale organization in biological and ...
International audienceWe propose a method that allows to detect the subset of the sparse nodes in a ...
Abstract. Community detection is the process of assigning nodes and links in significant communities...
Discovering communities in complex networks is essential in performing analyses, such as dynamics of...
Identifying intrinsic structures in large networks is a fundamental problem in many fields, such as ...
Community detection is the process of assigning nodes and links in significant communities (e.g. clu...
In this thesis, we first explore two different approaches to efficient community detection that addr...
We develop an algorithm to detect community structure in complex networks. The algorithm is based on...
Community detection is an important aspect of network analysis that has far-reaching consequences, i...
In this thesis, we first explore two different approaches to efficient community detection that addr...
We develop an algorithm to detect community structure in complex networks. The algorithm is based on...
Community detection is the process of assigning nodes and links in significant communities (e.g. clu...
A common and important problem arising in the study of net-works is how to divide the vertices of a ...
Community detection in complex networks is an important issue in network science. Several statistica...
Researchers use community-detection algorithms to reveal large-scale organization in biological and ...
Researchers use community-detection algorithms to reveal large-scale organization in biological and ...
International audienceWe propose a method that allows to detect the subset of the sparse nodes in a ...
Abstract. Community detection is the process of assigning nodes and links in significant communities...
Discovering communities in complex networks is essential in performing analyses, such as dynamics of...
Identifying intrinsic structures in large networks is a fundamental problem in many fields, such as ...
Community detection is the process of assigning nodes and links in significant communities (e.g. clu...
In this thesis, we first explore two different approaches to efficient community detection that addr...
We develop an algorithm to detect community structure in complex networks. The algorithm is based on...
Community detection is an important aspect of network analysis that has far-reaching consequences, i...
In this thesis, we first explore two different approaches to efficient community detection that addr...
We develop an algorithm to detect community structure in complex networks. The algorithm is based on...
Community detection is the process of assigning nodes and links in significant communities (e.g. clu...
A common and important problem arising in the study of net-works is how to divide the vertices of a ...
Community detection in complex networks is an important issue in network science. Several statistica...