Many techniques have been proposed for community detection in social networks. Most of these techniques are only designed for networks defined by a single relation. However, many real networks are multiplex networks that contain multiple types of relations and different attributes on the nodes. In this paper we propose to use relational Bayesian networks for the specification of probabilistic network models, and develop inference techniques that solve the community detection problem based on these models. The use of relational Bayesian networks as a flexible high-level modeling framework enables us to express different models capturing different aspects of community detection in multiplex networks in a coherent manner, and to use a single i...
Detecting clusters or communities in complex networks is a hot topic in machine learning and data mi...
Networks have become a common data mining tool to encode relational definitions between a set of ent...
We develop a Belief Propagation algorithm for community detection problem in multiplex networks, whi...
Belief propagation is a technique to optimize probabilistic graphical models, and has been used to s...
Identification of community structures and the underlying semantic characteristics of communities ar...
A multiplex network models different modes of interaction among same-type entities. In this article,...
International audienceA multiplex network models different modes of interaction among same-type enti...
Most work in the area of statistical relational learning (SRL) is focussed on discrete data, even th...
This thesis presents Bayesian solutions to inference problems for three types of social network data...
To unravel the driving patterns of networks, the most popular models rely on community detection alg...
A network consists of a set of vertices and a set of edges between these vertices. The vertices repr...
There has been an increasing interest in exploring signed networks with positive and negative links ...
Statistical relational learning (SRL) provides effective techniques to analyze social network data w...
Stochastic block models characterize observed network relationships via latent community memberships...
Community detection or clustering is a fundamental task in the analysis of network data. Most networ...
Detecting clusters or communities in complex networks is a hot topic in machine learning and data mi...
Networks have become a common data mining tool to encode relational definitions between a set of ent...
We develop a Belief Propagation algorithm for community detection problem in multiplex networks, whi...
Belief propagation is a technique to optimize probabilistic graphical models, and has been used to s...
Identification of community structures and the underlying semantic characteristics of communities ar...
A multiplex network models different modes of interaction among same-type entities. In this article,...
International audienceA multiplex network models different modes of interaction among same-type enti...
Most work in the area of statistical relational learning (SRL) is focussed on discrete data, even th...
This thesis presents Bayesian solutions to inference problems for three types of social network data...
To unravel the driving patterns of networks, the most popular models rely on community detection alg...
A network consists of a set of vertices and a set of edges between these vertices. The vertices repr...
There has been an increasing interest in exploring signed networks with positive and negative links ...
Statistical relational learning (SRL) provides effective techniques to analyze social network data w...
Stochastic block models characterize observed network relationships via latent community memberships...
Community detection or clustering is a fundamental task in the analysis of network data. Most networ...
Detecting clusters or communities in complex networks is a hot topic in machine learning and data mi...
Networks have become a common data mining tool to encode relational definitions between a set of ent...
We develop a Belief Propagation algorithm for community detection problem in multiplex networks, whi...