Relational data arising in many domains can be represented by networks (or graphs) with nodes capturing entities and edges representing relationships between these entities. Community detection in networks has become one of the most important problems having a broad range of applications. Until recently, the vast majority of papers have focused on discovering community structures in a single network. However, with the emergence of multi-view network data in many real-world applications and consequently with the advent of multilayer graph representation, community detection in multi-layer graphs has become a new challenge. Multi-layer graphs provide complementary views of connectivity patterns of the same set of vertices. Fusion of the netwo...
The study of complex networks has significantly advanced our understanding of community structures w...
Finding communities in multilayer networks is a vital step in understanding the structure and dynami...
Network data appears in very diverse applications, like from biological, social, or sensor networks....
Relational data arising in many domains can be represented by networks (or graphs) with nodes captur...
Over the last two decades, we have witnessed a massive explosion of our data collection abilities an...
Networks have been a general tool for representing, analyzing, and modeling relational data arising ...
Many complex systems are composed of coupled networks through different layers, where each layer rep...
International audienceThe problem of local community detection in graphs refers to the identificatio...
Detecting community structure is an important methodology to study complex networks. Community detec...
Detecting community structure is an important methodology to study complex networks. Community detec...
Community detection is the study of discovering groups of nodes more connected toeach other than to ...
Community detection is the study of discovering groups of nodes more connected toeach other than to ...
Identifying communities from networks has been a subject of great interest in Biological and Social ...
Clustering on graphs has been studied extensively for years due to its numerous applications. Howeve...
Community detection in complex networks is a fundamental data analysis task in various domains, and ...
The study of complex networks has significantly advanced our understanding of community structures w...
Finding communities in multilayer networks is a vital step in understanding the structure and dynami...
Network data appears in very diverse applications, like from biological, social, or sensor networks....
Relational data arising in many domains can be represented by networks (or graphs) with nodes captur...
Over the last two decades, we have witnessed a massive explosion of our data collection abilities an...
Networks have been a general tool for representing, analyzing, and modeling relational data arising ...
Many complex systems are composed of coupled networks through different layers, where each layer rep...
International audienceThe problem of local community detection in graphs refers to the identificatio...
Detecting community structure is an important methodology to study complex networks. Community detec...
Detecting community structure is an important methodology to study complex networks. Community detec...
Community detection is the study of discovering groups of nodes more connected toeach other than to ...
Community detection is the study of discovering groups of nodes more connected toeach other than to ...
Identifying communities from networks has been a subject of great interest in Biological and Social ...
Clustering on graphs has been studied extensively for years due to its numerous applications. Howeve...
Community detection in complex networks is a fundamental data analysis task in various domains, and ...
The study of complex networks has significantly advanced our understanding of community structures w...
Finding communities in multilayer networks is a vital step in understanding the structure and dynami...
Network data appears in very diverse applications, like from biological, social, or sensor networks....