International audienceStochastic Block Model (SBM) provides a statistical tool for modeling and clustering network data. In this paper, we propose an extension of this model for discrete-time dynamic networks that takes into account the variability in node degrees, allowing us to model a broader class of networks. We develop a probabilistic model that generates temporal graphs with a dynamic cluster structure and time-dependent degree corrections for each node. Thanks to these degree corrections, the nodes can have variable in-and out-degrees, allowing us to model complex cluster structures as well as interactions that decrease or increase over time. We compare the proposed model to a model without degree correction and highlight its advant...
Dynamic networks where edges appear and disappear over time and multi-layer networks that deal with ...
This thesis focuses on the statistical analysis of dynamic graphs, both defined in discrete or conti...
International audienceThe increasing amount of data stored in the form of dynamic interactions betwe...
In Stochastic blockmodels, which are among the most prominent statistical mod-els for cluster analys...
Stochastic block models (SBMs) provide a statistical way modeling network data, especially in repres...
© 2013 IEEE. Stochastic block models (SBMs) have been playing an important role in modeling clusters...
International audienceStatistical node clustering in discrete time dynamic networks is an emerging f...
Stochastic block models (SBMs) provide a statistical way modeling network data, especially in repres...
International audienceThe present paper develops a probabilistic model to cluster the nodes of a dyn...
There has been great interest in recent years in the development of statistical models for dynamic n...
A central problem in analyzing networks is partitioning them into modules or communities, clusters w...
Latent stochastic block models are flexible statistical models that are widely used in social networ...
Dynamic networks where edges appear and disappear over time and multi-layer networks that deal with ...
This thesis focuses on the statistical analysis of dynamic graphs, both defined in discrete or conti...
International audienceThe increasing amount of data stored in the form of dynamic interactions betwe...
In Stochastic blockmodels, which are among the most prominent statistical mod-els for cluster analys...
Stochastic block models (SBMs) provide a statistical way modeling network data, especially in repres...
© 2013 IEEE. Stochastic block models (SBMs) have been playing an important role in modeling clusters...
International audienceStatistical node clustering in discrete time dynamic networks is an emerging f...
Stochastic block models (SBMs) provide a statistical way modeling network data, especially in repres...
International audienceThe present paper develops a probabilistic model to cluster the nodes of a dyn...
There has been great interest in recent years in the development of statistical models for dynamic n...
A central problem in analyzing networks is partitioning them into modules or communities, clusters w...
Latent stochastic block models are flexible statistical models that are widely used in social networ...
Dynamic networks where edges appear and disappear over time and multi-layer networks that deal with ...
This thesis focuses on the statistical analysis of dynamic graphs, both defined in discrete or conti...
International audienceThe increasing amount of data stored in the form of dynamic interactions betwe...