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arxiv: 0710.2092 · v2 · submitted 2007-10-10 · ❄️ cond-mat.dis-nn · cs.NI· physics.soc-ph

Self-similarity of complex networks and hidden metric spaces

classification ❄️ cond-mat.dis-nn cs.NIphysics.soc-ph
keywords hiddennetworksself-similaritymetricspacesrealrenormalizationrespect
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We demonstrate that the self-similarity of some scale-free networks with respect to a simple degree-thresholding renormalization scheme finds a natural interpretation in the assumption that network nodes exist in hidden metric spaces. Clustering, i.e., cycles of length three, plays a crucial role in this framework as a topological reflection of the triangle inequality in the hidden geometry. We prove that a class of hidden variable models with underlying metric spaces are able to accurately reproduce the self-similarity properties that we measured in the real networks. Our findings indicate that hidden geometries underlying these real networks are a plausible explanation for their observed topologies and, in particular, for their self-similarity with respect to the degree-based renormalization.

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