Physical Review Research (Jun 2020)

Identifying time dependence in network growth

  • Max Falkenberg,
  • Jong-Hyeok Lee,
  • Shun-ichi Amano,
  • Ken-ichiro Ogawa,
  • Kazuo Yano,
  • Yoshihiro Miyake,
  • Tim S. Evans,
  • Kim Christensen

DOI
https://doi.org/10.1103/PhysRevResearch.2.023352
Journal volume & issue
Vol. 2, no. 2
p. 023352

Abstract

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Identifying power-law scaling in real networks—indicative of preferential attachment—has proved controversial. Critics argue that measuring the temporal evolution of a network directly is better than measuring the degree distribution when looking for preferential attachment. However, many of the established methods do not account for any potential time dependence in the attachment kernels of growing networks, or methods assume that node degree is the key observable determining network evolution. In this paper, we argue that these assumptions may lead to misleading conclusions about the evolution of growing networks. We illustrate this by introducing a simple adaptation of the Barabási-Albert model, the “k2 model,” where new nodes attach to nodes in the existing network in proportion to the number of nodes one or two steps from the target node. The k2 model results in time dependent degree distributions and attachment kernels, despite initially appearing to grow as linear preferential attachment, and without the need to include explicit time dependence in key network parameters (such as the average out-degree). We show that similar effects are seen in several real world networks where constant network growth rules do not describe their evolution. This implies that measurements of specific degree distributions in real networks are likely to change over time.