Discovery of communities in complex networks is a fundamental data analysis problem with applications in various domains. While most of the existing approaches have focused on discovering communities of nodes, recent studies have shown the advantages and uses of link community discovery in networks. Generative models provide a promising class of techniques for the identification of modular structures in networks, but most generative models mainly focus on the detection of node communities rather than link communities. In this work, we propose a generative model, which is based on the importance of each node when forming links in each community, to describe the structure of link communities. We proceed to fit the model parameters by taking i...
Identification of modular or community structures of a network is a key to understanding the semanti...
Community detection is a fundamental problem in the analysis of complex networks. Recently, many res...
Networks have been a general tool for representing, analyzing, and modeling relational data arising ...
Discovery of communities in complex networks is a fundamental data analysis problem with application...
Identification of communities in complex networks is an important topic and issue in many fields suc...
Abstract Many physical and social systems are best described by networks. And the str...
Community structure detection is of great significance for better understanding the network topology...
In the past ten years, community detection in complex networks has attracted more and more at-tentio...
Community detection in complex networks is a fundamental data analysis task in various domains, and ...
Community discovery can discover the community structure in a network, and it provides consumers wit...
The investigation of community structures in networks is an important issue in many domains and disc...
Constrained clustering has been well-studied in the unsupervised learning society. However, how to e...
Discovery of communities in networks is a fundamental data analysis problem. Most of the existing ap...
Many complex systems can be modeled as complex networks, so we can use network theory to study this ...
Uncovering community structures is important for understanding networks. Currently, several nonnegat...
Identification of modular or community structures of a network is a key to understanding the semanti...
Community detection is a fundamental problem in the analysis of complex networks. Recently, many res...
Networks have been a general tool for representing, analyzing, and modeling relational data arising ...
Discovery of communities in complex networks is a fundamental data analysis problem with application...
Identification of communities in complex networks is an important topic and issue in many fields suc...
Abstract Many physical and social systems are best described by networks. And the str...
Community structure detection is of great significance for better understanding the network topology...
In the past ten years, community detection in complex networks has attracted more and more at-tentio...
Community detection in complex networks is a fundamental data analysis task in various domains, and ...
Community discovery can discover the community structure in a network, and it provides consumers wit...
The investigation of community structures in networks is an important issue in many domains and disc...
Constrained clustering has been well-studied in the unsupervised learning society. However, how to e...
Discovery of communities in networks is a fundamental data analysis problem. Most of the existing ap...
Many complex systems can be modeled as complex networks, so we can use network theory to study this ...
Uncovering community structures is important for understanding networks. Currently, several nonnegat...
Identification of modular or community structures of a network is a key to understanding the semanti...
Community detection is a fundamental problem in the analysis of complex networks. Recently, many res...
Networks have been a general tool for representing, analyzing, and modeling relational data arising ...