posted on 2023-01-09, 14:28authored bySergey Melnik, Adam W. Hackett, Mason A Porter, Peter J Mucha, James GleesonJames Gleeson
We demonstrate that a tree-based theory for various dynamical processes operating on static, undirected networks yields extremely accurate results for several networks with high levels of clustering. We find that such a theory works well as long as the mean intervertex distance l is sufficiently small-that is, as long as it is close to the value of l in a random network with negligible clustering and the same degree-degree correlations. We support this hypothesis numerically using both real-world networks from various domains and several classes of synthetic clustered networks. We present analytical calculations that further support our claim that tree-based theories can be accurate for clustered networks, provided that the networks are "sufficiently small" worlds.
History
Publication
Physical Review E;83, 036112
Publisher
American Physical Society
Note
peer-reviewed
Other Funding information
SFI
Language
English
Also affiliated with
MACSI - Mathematics Application Consortium for Science & Industry