The concept of a cluster or community in a network context has been of considerable interest in a variety of settings in recent years. In this paper, employing random walks and geodesic distance, we introduce a unified measure of cluster-based proximity between nodes, relative to a given subset of interest. The inherent simplicity and informativeness of the approach could make it of value to researchers in a variety of scientific fields. Applicability is demonstrated via application to clustering for a number of existent data sets (including multipartite networks). We view community detection (i.e. when the full set of network nodes is considered) as simply the limiting instance of clustering (for arbitrary subsets). This perspective should...
Networks have become a common data mining tool to encode relational definitions between a set of ent...
The existence of community structures in networks is not unusual, including in the domains of sociol...
One feature discovered in the study of complex networks is community structure, in which vertices ar...
Proximity measures on graphs have a variety of applications in network analysis, including community...
International audienceIn large-scale online complex networks (Wikipedia, Facebook, Twitter, etc.) fi...
Based on an expert systems approach, the issue of community detection can be conceptualized as a clu...
Based on an expert systems approach, the issue of community detection can be conceptualized as a clu...
The identification of groups in social networks drawn as graphs is an important task for social scie...
Un grand nombre de données sont représentables sous la forme d'un graphe (ensemble de nœuds liés par...
Clustering of social networks, known as community detection is a fundamental partof social network a...
Traditional approaches from statistics, pattern recognition, machine-learning, or data-mining usuall...
Abstract—Network association is a prevalent representation when dealing with data from present-day a...
Clustering networks play a key role in many scientific fields, from Biology to Sociology and Compute...
International audienceThe exponential growth of data in various fields such as Social Networks and I...
Graphs or networks are mathematical structures that consist of elements that can be pairwise linked ...
Networks have become a common data mining tool to encode relational definitions between a set of ent...
The existence of community structures in networks is not unusual, including in the domains of sociol...
One feature discovered in the study of complex networks is community structure, in which vertices ar...
Proximity measures on graphs have a variety of applications in network analysis, including community...
International audienceIn large-scale online complex networks (Wikipedia, Facebook, Twitter, etc.) fi...
Based on an expert systems approach, the issue of community detection can be conceptualized as a clu...
Based on an expert systems approach, the issue of community detection can be conceptualized as a clu...
The identification of groups in social networks drawn as graphs is an important task for social scie...
Un grand nombre de données sont représentables sous la forme d'un graphe (ensemble de nœuds liés par...
Clustering of social networks, known as community detection is a fundamental partof social network a...
Traditional approaches from statistics, pattern recognition, machine-learning, or data-mining usuall...
Abstract—Network association is a prevalent representation when dealing with data from present-day a...
Clustering networks play a key role in many scientific fields, from Biology to Sociology and Compute...
International audienceThe exponential growth of data in various fields such as Social Networks and I...
Graphs or networks are mathematical structures that consist of elements that can be pairwise linked ...
Networks have become a common data mining tool to encode relational definitions between a set of ent...
The existence of community structures in networks is not unusual, including in the domains of sociol...
One feature discovered in the study of complex networks is community structure, in which vertices ar...