Flexible construction of hierarchical scale-free networks with general exponent
J.C. Nacher, N. Ueda, M. Kanehisa, T. Akutsu

TL;DR
This paper introduces a flexible hierarchical network model capable of generating scale-free networks with a wide range of exponents and structural configurations, closely mimicking properties observed in real-world networks.
Contribution
The model uniquely allows for arbitrary exponent values greater than 2 and incorporates various building blocks, enhancing the ability to replicate diverse hierarchical scale-free topologies.
Findings
Generates networks with scale-free degree distribution for any exponent > 2
Reproduces hierarchical clustering coefficient scaling
Flexible structural configurations with various building blocks
Abstract
Extensive studies have been done to understand the principles behind architectures of real networks. Recently, evidences for hierarchical organization in many real networks have also been reported. Here, we present a new hierarchical model which reproduces the main experimental properties observed in real networks: scale-free of degree distribution (frequency of the nodes that are connected to other nodes decays as a power-law ) and power-law scaling of the clustering coefficient . The major novelties of our model can be summarized as follows: {\it (a)} The model generates networks with scale-free distribution for the degree of nodes with general exponent , and arbitrarily close to any specified value, being able to reproduce most of the observed hierarchical scale-free topologies. In contrast, previous models can not obtain…
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