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Role of dimensionality in preferential attachment growth in the Bianconi-Barabási model

arXiv:1705.00014 · doi:10.1088/1742-5468/aa8198

Abstract

Scale-free networks are quite popular nowadays since many systems are well represented by such structures. In order to study these systems, several models were proposed. However, most of them do not take into account the node-to-node Euclidean distance, i.e., the geographical distance. In real networks, the distance between sites can be very relevant, e.g., those cases where it is intended to minimize costs. Within this scenario we studied the role of dimensionality $d$ in the Bianconi-Barabási model with a preferential attachment growth involving Euclidean distances. The preferential attachment in this model follows the rule $Π_{i} \propto η_i k_i/r_{ij}^{α_A}$ $(1 \leq i < j; α_A \geq 0)$, where $η_i$ characterizes the fitness of the $i$-th site and is randomly chosen within the $(0,1]$ interval. We verified that the degree distribution $P(k)$ for dimensions $d=1,2,3,4$ are well fitted by $P(k) \propto e_q^{-k/κ}$, where $e_q^{-k/κ}$ is the $q$-exponential function naturally emerging within nonextensive statistical mechanics. We determine the index $q$ and $κ$ as functions of the quantities $α_A$ and $d$, and numerically verify that both present a universal behavior with respect to the scaled variable $α_A/d$. The same behavior also has been displayed by the dynamical $β$ exponent which characterizes the steadily growing number of links of a given site.

12 pages including 9 figures. To appear in the Journal of Statistical Mechanics (2017)