Reciprocity, community detection, and link prediction in dynamic networks
Hadiseh Safdari, Martina Contisciani, Caterina De Bacco

TL;DR
This paper introduces a probabilistic dynamic network model that incorporates reciprocity and community structure, improving realism and link prediction accuracy in evolving networks.
Contribution
It presents a novel generative model integrating reciprocity and communities for dynamic networks, with an efficient EM inference method.
Findings
Model captures reciprocity better than standard models.
Performs well in link prediction tasks.
Effective on synthetic and real datasets.
Abstract
Many complex systems change their structure over time, in these cases dynamic networks can provide a richer representation of such phenomena. As a consequence, many inference methods have been generalized to the dynamic case with the aim to model dynamic interactions. Particular interest has been devoted to extend the stochastic block model and its variant, to capture community structure as the network changes in time. While these models assume that edge formation depends only on the community memberships, recent work for static networks show the importance to include additional parameters capturing structural properties, as reciprocity for instance. Remarkably, these models are capable of generating more realistic network representations than those that only consider community membership. To this aim, we present a probabilistic generative model with hidden variables that integrates…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Mental Health Research Topics
