© 2019 IEEE. Graph decomposition has been widely used to analyze real-life networks from different perspectives. Recent studies focus on the hierarchical graph decomposition methods to handle big graphs in many real-life applications such as community detection, network analysis, network visualization, internet topology analysis and protein function prediction. In this tutorial, we first highlight the importance of hierarchical graph decomposition in a variety of applications and the unique challenges that need to be addressed. Subsequently, we provide an overview of the existing models and the computation algorithms under different computing environments. Then we discuss the integration of existing models with other approaches to better ca...
We use the k-core decomposition to visualize large scale complex networks in two dimensions. This de...
Vertices in complex networks can be grouped into communities, where vertices inside communities...
The world is becoming a more conjunct place and the number of data sources such as social networks, ...
Large networks are useful in a wide range of applications. Sometimes problem instances are composed ...
We introduce an architecture based on deep hierarchical decompositions to learn effective representa...
International audienceNatural graphs, such as social networks, email graphs, or instant messaging pa...
The structure of large networks models and Internet graphs in the autonomous system can be character...
Graphs are very important parts of Big Data and widely used for modelling complex structured data wi...
Human exploration of large data sets becomes increasingly difficult with growing amounts of data. Fo...
Network analysis is an important step in the understanding of complex systems studied in various are...
Human exploration of large graph structures becomes increasingly difficult with growing graph sizes....
15 pagesNational audienceThis paper deals with the analysis and the visualization of large graphs. O...
Graphs naturally represent information in a wide range of disciplines, from social science to biolog...
The real-world large scale networks motivate the need for parallel and distributed evaluation of net...
The goal of this PhD thesis is to exemplify how methods to model complex systems, mainly the languag...
We use the k-core decomposition to visualize large scale complex networks in two dimensions. This de...
Vertices in complex networks can be grouped into communities, where vertices inside communities...
The world is becoming a more conjunct place and the number of data sources such as social networks, ...
Large networks are useful in a wide range of applications. Sometimes problem instances are composed ...
We introduce an architecture based on deep hierarchical decompositions to learn effective representa...
International audienceNatural graphs, such as social networks, email graphs, or instant messaging pa...
The structure of large networks models and Internet graphs in the autonomous system can be character...
Graphs are very important parts of Big Data and widely used for modelling complex structured data wi...
Human exploration of large data sets becomes increasingly difficult with growing amounts of data. Fo...
Network analysis is an important step in the understanding of complex systems studied in various are...
Human exploration of large graph structures becomes increasingly difficult with growing graph sizes....
15 pagesNational audienceThis paper deals with the analysis and the visualization of large graphs. O...
Graphs naturally represent information in a wide range of disciplines, from social science to biolog...
The real-world large scale networks motivate the need for parallel and distributed evaluation of net...
The goal of this PhD thesis is to exemplify how methods to model complex systems, mainly the languag...
We use the k-core decomposition to visualize large scale complex networks in two dimensions. This de...
Vertices in complex networks can be grouped into communities, where vertices inside communities...
The world is becoming a more conjunct place and the number of data sources such as social networks, ...