A class of statistical models is proposed that aims to recover latent settings structures in social networks. Settings may be regarded as clusters of vertices. The measurement model is based on two assumptions. (1) The observed network is generated by hierarchically nested latent transitive structures, expressed by ultrametrics, and (2) the expected tie strength decreases with ultrametric distance. The approach could be described as model-based clustering with an ultrametric space as the underlying metric to capture the dependence in the observations. Bayesian methods as well as maximum-likelihood methods are applied for statistical inference. Both approaches are implemented using Markov chain Monte Carlo methods
The study of social network dynamics has become an increasingly important component of many discipli...
This research evaluates the identification of group structure in social networks through the latent ...
Statistical models for social networks as dependent variables must represent the typical network dep...
A class of statistical models is proposed that aims to recover latent settings structures in social ...
A class of statistical models is proposed that aims to recover latent settings structures in social ...
A class of statistical models is proposed that aims to recover latent settings structures in social ...
A class of statistical models is proposed which aims to recover latent settings structures in social...
Network models are widely used to represent relations between interacting units or actors. Network d...
Abstract: Clusterwise p ∗ models are developed to detect differentially functioning network models a...
preparation of this paper. Social network data often involve transitivity, homophily on observed att...
latentnet is a package to fit and evaluate statistical latent position and cluster models for networ...
Network models are widely used to represent relations between interacting units or actors. Network d...
We present a systematic examination of real network datasets using maximum likelihood estimation for...
latentnet is a package to fit and evaluate statistical latent position and cluster models for networ...
<p>Despite increased interest across a range of scientific applications in modeling and understandin...
The study of social network dynamics has become an increasingly important component of many discipli...
This research evaluates the identification of group structure in social networks through the latent ...
Statistical models for social networks as dependent variables must represent the typical network dep...
A class of statistical models is proposed that aims to recover latent settings structures in social ...
A class of statistical models is proposed that aims to recover latent settings structures in social ...
A class of statistical models is proposed that aims to recover latent settings structures in social ...
A class of statistical models is proposed which aims to recover latent settings structures in social...
Network models are widely used to represent relations between interacting units or actors. Network d...
Abstract: Clusterwise p ∗ models are developed to detect differentially functioning network models a...
preparation of this paper. Social network data often involve transitivity, homophily on observed att...
latentnet is a package to fit and evaluate statistical latent position and cluster models for networ...
Network models are widely used to represent relations between interacting units or actors. Network d...
We present a systematic examination of real network datasets using maximum likelihood estimation for...
latentnet is a package to fit and evaluate statistical latent position and cluster models for networ...
<p>Despite increased interest across a range of scientific applications in modeling and understandin...
The study of social network dynamics has become an increasingly important component of many discipli...
This research evaluates the identification of group structure in social networks through the latent ...
Statistical models for social networks as dependent variables must represent the typical network dep...