Quantifying dynamical spillover in co-evolving multiplex networks
May 18, 2015 Β· Declared Dead Β· π Scientific Reports
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Authors
Vikram S. Vijayaraghavan, Pierre-AndrΓ© NoΓ«l, Zeev Maoz, Raissa M. D'Souza
arXiv ID
1505.04766
Category
physics.soc-ph
Cross-listed
cond-mat.dis-nn,
cs.SI
Citations
26
Venue
Scientific Reports
Last Checked
3 months ago
Abstract
Multiplex networks (a system of multiple networks that have different types of links but share a common set of nodes) arise naturally in a wide spectrum of fields. Theoretical studies show that in such multiplex networks, correlated edge dynamics between the layers can have a profound effect on dynamical processes. However, how to extract the correlations from real-world systems is an outstanding challenge. Here we provide a null model based on Markov chains to quantify correlations in edge dynamics found in longitudinal data of multiplex networks. We use this approach on two different data sets: the network of trade and alliances between nation states, and the email and co-commit networks between developers of open source software. We establish the existence of "dynamical spillover" showing the correlated formation (or deletion) of edges of different types as the system evolves. The details of the dynamics over time provide insight into potential causal pathways.
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