Weighted temporal event graphs
December 09, 2019 Β· Declared Dead Β· π Computers and the Social Sciences
"No code URL or promise found in abstract"
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Authors
Jari SaramΓ€ki, Mikko KivelΓ€, MΓ‘rton Karsai
arXiv ID
1912.03904
Category
physics.soc-ph
Cross-listed
cs.SI
Citations
7
Venue
Computers and the Social Sciences
Last Checked
3 months ago
Abstract
The times of temporal-network events and their correlations contain information on the function of the network and they influence dynamical processes taking place on it. To extract information out of correlated event times, techniques such as the analysis of temporal motifs have been developed. We discuss a recently-introduced, more general framework that maps temporal-network structure into static graphs while retaining information on time-respecting paths and the time differences between their consequent events. This framework builds on weighted temporal event graphs: directed, acyclic graphs (DAGs) that contain a superposition of all temporal paths. We introduce the reader to the temporal event-graph mapping and associated computational methods and illustrate its use by applying the framework to temporal-network percolation.
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