Scale-free networks with tunable degree distribution exponents

Abstract

We propose and study a model of scale-free growing networks that gives a degree distribution dominated by a power-law behavior with a model-dependent, hence tunable, exponent. The model represents a hybrid of the growing networks based on popularity-driven and fitness-driven preferential attachments. As the network grows, a newly added node establishes m new links to existing nodes with a probability p based on popularity of the existing nodes and a probability 1-p based on fitness of the existing nodes. An explicit form of the degree distribution P(p,k) is derived within a mean field approach. For reasonably large k, P(p,k) k-γ(p) F(k,p), where the function F is dominated by the behavior of 1/(k/m) for small values of p and becomes k-independent as p 1, and γ(p) is a model-dependent exponent. The degree distribution and the exponent γ(p) are found to be in good agreement with results obtained by extensive numerical simulations.

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