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To reproduce results for Strong spatial embedding of social networks generates non-standard epidemic dynamics independent of degree distribution and clustering PNAS 2020 David J. Haw, Rachael Pung, Jonathan M. Read, Steven Riley Please also contact David Haw on djhaw@live.co.uk or Steven Riley on sr@stevenriley.net to check if there is an updated version of these scripts merged into more recent versions of the network generation code. .Rdata files contain all networks used for the study. These can be generated in the scenarios/ebola directory, but are provided here for convenience. The README.md in the root directory explains how to use the R and matlab code.
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