Abstract
Clustering–the tendency for neighbors of nodes to be connected–quantifies the coupling of a complex network to its latent metric space. In random geometric graphs, clustering undergoes a continuous phase transition, separating a phase with finite clustering from a regime where clustering vanishes in the thermodynamic limit. We prove this geometric to non-geometric phase transition to be topological in nature, with anomalous features such as diverging entropy as well as atypical finite-size scaling behavior of clustering. Moreover, a slow decay of clustering in the non-geometric phase implies that some real networks with relatively high levels of clustering may be better described in this regime.
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CITATION STYLE
van der Kolk, J., Serrano, M. Á., & Boguñá, M. (2022). An anomalous topological phase transition in spatial random graphs. Communications Physics, 5(1). https://doi.org/10.1038/s42005-022-01023-w
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