Nowadays, networks are almost ubiquitous. In the past decade, community detection received an increasing interest as a way to uncover the structure of networks by grouping nodes into communities more densely connected internally than externally. Yet most of the effective methods available do not consider the potential levels of organisation, or scales, a network may encompass and are therefore limited. In this paper we present a method com-patible with global and local criteria that enables fast multi-scale community detection. The method is derived in two algorithms, one for each type of criterion, and implemented with 6 known criteria. Uncovering communities at various scales is a computationally expensive task. Therefore this work puts a...
Community detection is essential to analyzing and exploring natural networks such as social networks...
Community detection is a hot topic for researchers in the fields including graph theory, social netw...
International audienceDiscovering community structure in complex networks is a mature field since a ...
Many systems can be described using graphs, or networks. Detecting communities in these networks can...
Community structure is one of the most important features of complex networks. Modularity-based meth...
The investigation of community structure in networks has aroused great interest in multiple discipli...
International audienceWe propose a simple method to extract the community structure of large network...
ABSTRACT Community detection from complex information networks draws much attention from both acade...
An important problem in the analysis of network data is the detection of groups of densely interconn...
International audienceThe problem of local community detection in graphs refers to the identificatio...
The problem and implications of community detection in networks have raised a huge attention, for it...
Many complex systems are composed of coupled networks through different layers, where each layer rep...
Community detection in complex networks has been hindered by two defects: (1) the resolution limit p...
Abstract—The detection of communities (internally dense sub-graphs) is a network analysis task with ...
Abstract. The problem and implications of community detection in networks have raised a huge attenti...
Community detection is essential to analyzing and exploring natural networks such as social networks...
Community detection is a hot topic for researchers in the fields including graph theory, social netw...
International audienceDiscovering community structure in complex networks is a mature field since a ...
Many systems can be described using graphs, or networks. Detecting communities in these networks can...
Community structure is one of the most important features of complex networks. Modularity-based meth...
The investigation of community structure in networks has aroused great interest in multiple discipli...
International audienceWe propose a simple method to extract the community structure of large network...
ABSTRACT Community detection from complex information networks draws much attention from both acade...
An important problem in the analysis of network data is the detection of groups of densely interconn...
International audienceThe problem of local community detection in graphs refers to the identificatio...
The problem and implications of community detection in networks have raised a huge attention, for it...
Many complex systems are composed of coupled networks through different layers, where each layer rep...
Community detection in complex networks has been hindered by two defects: (1) the resolution limit p...
Abstract—The detection of communities (internally dense sub-graphs) is a network analysis task with ...
Abstract. The problem and implications of community detection in networks have raised a huge attenti...
Community detection is essential to analyzing and exploring natural networks such as social networks...
Community detection is a hot topic for researchers in the fields including graph theory, social netw...
International audienceDiscovering community structure in complex networks is a mature field since a ...