Choosing the number of groups in a latent stochastic block model for dynamic networks.
Publication Type:
Refereed Original Article
Abstract:
Latent stochastic block models are flexible statistical models that are widely used
in social network analysis. In recent years, efforts have been made to extend these
models to temporal dynamic networks, whereby the connections between nodes are
observed at a number of different times. In this paper we extend the original stochastic
block model by using a Markovian property to describe the evolution of nodes’
cluster memberships over time. We recast the problem of clustering the nodes of
the network into a model-based context, and show that the integrated completed
likelihood can be evaluated analytically for a number of likelihood models. Then, we
propose a scalable greedy algorithm to maximise this quantity, thereby estimating
both the optimal partition and the ideal number of groups in a single inferential
framework. Finally we propose applications of our methodology to both real and
artificial datasets.
Digital Object Identifer (DOI):
10.xxx
Publication Status:
Published
Date Accepted for Publication:
Friday, 10 February, 2017
Publication Date:
22/03/2017
Journal:
Network Science.
Research Group:
Institution:
National University of Ireland, Dublin (UCD)
Open access repository:
No