In this paper we present a novel strategy to discover the community structure of (possibly, large) networks. This approach is based on the well-know concept of network modularity optimization. To do so, our algorithm exploits a novel measure of edge centrality, based on the k-paths. This technique allows to efficiently compute a edge ranking in large networks in near linear time. Once the centrality ranking is calculated, the algorithm computes the pairwise proximity between nodes of the network. Finally, it discovers the community structure adopting a strategy inspired by the well-known state-of-the-art Louvain method (henceforth, LM), efficiently maximizing the network modularity. The experiments we carried out show that our algorithm out...
Graphs or networks are mathematical structures that consist of elements that can be pairwise linked ...
The problem of clustering large complex networks plays a key role in several scientific fields rangi...
There is increasing motivation to study bipartite complex networks as a separate category and, in pa...
Abstract—In this paper we present a novel strategy to discover the community structure of (possibly,...
International audienceWe propose a simple method to extract the community structure of large network...
Part 5: Natural Language ProcessingInternational audienceExisting studies about community detection ...
Discovering dense subparts, called communities, in complex networks is a fundamental issue in data a...
In this paper we consider the community detection problem from two different perspectives. We first ...
Complex networks describe a wide range of systems in nature and society. To understand complex netwo...
Please cite the following published version: https://doi.org/10.1016/j.physa.2022.127798 rather than...
The community structure of a complex network can be determined by finding the partitioning of its n...
Community structure is one of the main structural features of networks, revealing both their interna...
Many complex systems can be modeled as complex networks, so we can use network theory to study this ...
Community detection is often used to understand the structure of large and complex networks. One of ...
Evaluating influential nodes is one of the fundamental problems in large scale networks having wide ...
Graphs or networks are mathematical structures that consist of elements that can be pairwise linked ...
The problem of clustering large complex networks plays a key role in several scientific fields rangi...
There is increasing motivation to study bipartite complex networks as a separate category and, in pa...
Abstract—In this paper we present a novel strategy to discover the community structure of (possibly,...
International audienceWe propose a simple method to extract the community structure of large network...
Part 5: Natural Language ProcessingInternational audienceExisting studies about community detection ...
Discovering dense subparts, called communities, in complex networks is a fundamental issue in data a...
In this paper we consider the community detection problem from two different perspectives. We first ...
Complex networks describe a wide range of systems in nature and society. To understand complex netwo...
Please cite the following published version: https://doi.org/10.1016/j.physa.2022.127798 rather than...
The community structure of a complex network can be determined by finding the partitioning of its n...
Community structure is one of the main structural features of networks, revealing both their interna...
Many complex systems can be modeled as complex networks, so we can use network theory to study this ...
Community detection is often used to understand the structure of large and complex networks. One of ...
Evaluating influential nodes is one of the fundamental problems in large scale networks having wide ...
Graphs or networks are mathematical structures that consist of elements that can be pairwise linked ...
The problem of clustering large complex networks plays a key role in several scientific fields rangi...
There is increasing motivation to study bipartite complex networks as a separate category and, in pa...