2noThe idea of the modal formulation of density-based clustering is to associate groups with the regions around the modes of the probability density function underlying the data. The correspondence between clusters and dense regions in the sample space is here exploited to discuss an extension of this approach to the analysis of social networks. Conceptually, the notion of high-density cluster fits well the one of community in a network, regarded to as a collection of individuals with dense local ties in its neighbourhood. The lack of a probabilistic notion of density in networks is turned into a strength of the proposed method, where node-wise measures that quantify the role of actors are used to derive different community configurations. ...
Spatial clustering deals with the unsupervised grouping of places into clusters and finds important ...
The density-based formulation aims at recasting the clustering problem to a mathematically sound fra...
We propose a simple mixed membership model for social network clustering in this note. A flexible fu...
The idea underlying modal clustering is to associate groups with the regions around the modes of the...
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...
Information networks, such as biological or social networks, contain groups of related entities, whi...
Information networks, such as biological or social networks, contain groups of related entities, whi...
An important aspect of community analysis is not only determining the communities within the network...
Based on an expert systems approach, the issue of community detection can be conceptualized as a clu...
Network models are widely used to represent relations between interacting units or actors. Network d...
Based on an expert systems approach, the issue of community detection can be conceptualized as a clu...
Spatial clustering deals with the unsupervised grouping of places into clusters and finds important ...
Spatial clustering deals with the unsupervised grouping of places into clusters and finds important ...
The density-based formulation aims at recasting the clustering problem to a mathematically sound fra...
We propose a simple mixed membership model for social network clustering in this note. A flexible fu...
The idea underlying modal clustering is to associate groups with the regions around the modes of the...
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...
Information networks, such as biological or social networks, contain groups of related entities, whi...
Information networks, such as biological or social networks, contain groups of related entities, whi...
An important aspect of community analysis is not only determining the communities within the network...
Based on an expert systems approach, the issue of community detection can be conceptualized as a clu...
Network models are widely used to represent relations between interacting units or actors. Network d...
Based on an expert systems approach, the issue of community detection can be conceptualized as a clu...
Spatial clustering deals with the unsupervised grouping of places into clusters and finds important ...
Spatial clustering deals with the unsupervised grouping of places into clusters and finds important ...
The density-based formulation aims at recasting the clustering problem to a mathematically sound fra...
We propose a simple mixed membership model for social network clustering in this note. A flexible fu...