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arxiv: 1110.5609 · v2 · pith:OUHSHAR3new · submitted 2011-10-25 · 🌊 nlin.AO · cs.SI· physics.soc-ph

Self-similar scaling of density in complex real-world networks

classification 🌊 nlin.AO cs.SIphysics.soc-ph
keywords networksreal-worlddensityscalingdifferentnetworkself-similarcomplex
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Despite their diverse origin, networks of large real-world systems reveal a number of common properties including small-world phenomena, scale-free degree distributions and modularity. Recently, network self-similarity as a natural outcome of the evolution of real-world systems has also attracted much attention within the physics literature. Here we investigate the scaling of density in complex networks under two classical box-covering renormalizations-network coarse-graining-and also different community-based renormalizations. The analysis on over 50 real-world networks reveals a power-law scaling of network density and size under adequate renormalization technique, yet irrespective of network type and origin. The results thus advance a recent discovery of a universal scaling of density among different real-world networks [Laurienti et al., Physica A 390 (20) (2011) 3608-3613.] and imply an existence of a scale-free density also within-among different self-similar scales of-complex real-world networks. The latter further improves the comprehension of self-similar structure in large real-world networks with several possible applications.

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