The idea underlying modal clustering is to associate groups with the regions around the modes of the probability density function underlying the data. This correspondence between clusters and dense regions in the sample space is here exploited to discuss a possible extension of modal clustering to the analysis of social networks. Such extension, albeit non trivial, seems particularly appealing: conceptually, the notion of high-density cluster fits well the one of cluster in a network, where groups are usually regarded as collections of individuals with dense local ties in their neighborhood. Additionally, modal clustering often resorts to graph theory for the operational detection of clusters, which is another condition that seems particula...
We develop an algorithm to detect community structure in complex networks. The algorithm is based on...
Graph clustering, or community detection, is the task of identifying groups of closely related objec...
We propose a simple mixed membership model for social network clustering in this note. A flexible fu...
2noThe idea of the modal formulation of density-based clustering is to associate groups with the reg...
Within large communities, individuals sparsely interact with each others but set a tight releationsh...
Clustering of social networks, known as community detection is a fundamental partof social network a...
Abstract: Clusterwise p ∗ models are developed to detect differentially functioning network models a...
Graph clustering, also often referred to as network community detection, is an unsupervised learning...
The problem of finding groups in data (cluster analysis) has been extensively studied by researchers...
Social network analysis is a cross-disciplinary study of interest to mathematicians, physicists, com...
A method for community detection (graph clustering) is developed by mapping the problem onto finding...
International audienceThe community detection problem is very natural : given a set of people and th...
We develop an algorithm to detect community structure in complex networks. The algorithm is based on...
Some studies on networks require to isolate groups of elements, known as Com-munities. Some examples...
Text Mining has become a specialized offshoot of Data Mining, Information Retrieval, and Natural Lan...
We develop an algorithm to detect community structure in complex networks. The algorithm is based on...
Graph clustering, or community detection, is the task of identifying groups of closely related objec...
We propose a simple mixed membership model for social network clustering in this note. A flexible fu...
2noThe idea of the modal formulation of density-based clustering is to associate groups with the reg...
Within large communities, individuals sparsely interact with each others but set a tight releationsh...
Clustering of social networks, known as community detection is a fundamental partof social network a...
Abstract: Clusterwise p ∗ models are developed to detect differentially functioning network models a...
Graph clustering, also often referred to as network community detection, is an unsupervised learning...
The problem of finding groups in data (cluster analysis) has been extensively studied by researchers...
Social network analysis is a cross-disciplinary study of interest to mathematicians, physicists, com...
A method for community detection (graph clustering) is developed by mapping the problem onto finding...
International audienceThe community detection problem is very natural : given a set of people and th...
We develop an algorithm to detect community structure in complex networks. The algorithm is based on...
Some studies on networks require to isolate groups of elements, known as Com-munities. Some examples...
Text Mining has become a specialized offshoot of Data Mining, Information Retrieval, and Natural Lan...
We develop an algorithm to detect community structure in complex networks. The algorithm is based on...
Graph clustering, or community detection, is the task of identifying groups of closely related objec...
We propose a simple mixed membership model for social network clustering in this note. A flexible fu...