Multi-layer graph analysis for dynamic social networks
Abstract
Modern social networks frequently encompass multiple distinct types of connectivity information; for instance, explicitly acknowledged friend relationships might complement behavioral measures that link users according to their actions or interests. One way to represent these networks is as multi-layer graphs, where each layer contains a unique set of edges over the same underlying vertices (users). Edges in different layers typically have related but distinct semantics; depending on the application multiple layers might be used to reduce noise through averaging, to perform multifaceted analyses, or a combination of the two. However, it is not obvious how to extend standard graph analysis techniques to the multi-layer setting in a flexible way. In this paper we develop latent variable models and methods for mining multi-layer networks for connectivity patterns based on noisy data.
Cite
@article{arxiv.1309.5124,
title = {Multi-layer graph analysis for dynamic social networks},
author = {Brandon Oselio and Alex Kulesza and Alfred O. Hero},
journal= {arXiv preprint arXiv:1309.5124},
year = {2015}
}
Comments
10 pages, 9 figures