Clustering Spectrum of scale-free networks
Abstract
Real-world networks often have power-law degrees and scale-free properties such as ultra-small distances and ultra-fast information spreading. In this paper, we study a third universal property: three-point correlations that suppress the creation of triangles and signal the presence of hierarchy. We quantify this property in terms of c(k), the probability that two neighbors of a degree-k node are neighbors themselves. We investigate how the clustering spectrum k c(k) scales with k in the hidden variable model and show that c(k) follows a universal curve that consists of three k-ranges where c(k) remains flat, starts declining, and eventually settles on a power law c(k) k-α with α depending on the power law of the degree distribution. We test these results against ten contemporary real-world networks and explain analytically why the universal curve properties only reveal themselves in large networks.
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