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Cross-linked structure of network evolution. | LitMetric

Cross-linked structure of network evolution.

Chaos

Department of Psychology and UCSB Brain Imaging Center, University of California, Santa Barbara, California 93106, USA.

Published: March 2014

We study the temporal co-variation of network co-evolution via the cross-link structure of networks, for which we take advantage of the formalism of hypergraphs to map cross-link structures back to network nodes. We investigate two sets of temporal network data in detail. In a network of coupled nonlinear oscillators, hyperedges that consist of network edges with temporally co-varying weights uncover the driving co-evolution patterns of edge weight dynamics both within and between oscillator communities. In the human brain, networks that represent temporal changes in brain activity during learning exhibit early co-evolution that then settles down with practice. Subsequent decreases in hyperedge size are consistent with emergence of an autonomous subgraph whose dynamics no longer depends on other parts of the network. Our results on real and synthetic networks give a poignant demonstration of the ability of cross-link structure to uncover unexpected co-evolution attributes in both real and synthetic dynamical systems. This, in turn, illustrates the utility of analyzing cross-links for investigating the structure of temporal networks.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC4108627PMC
http://dx.doi.org/10.1063/1.4858457DOI Listing

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