Department of Regional and Economic Development, Agricultural University of Athens, Greece, Nea Poli, Amfissa, 33100, Greece.
Department of Planning and Regional Development, University of Thessaly, Pedion Areos, Volos, 38334, Greece.
Sci Rep. 2020 Jun 30;10(1):10630. doi: 10.1038/s41598-020-67156-6.
The fitness model was introduced in the literature to expand the Barabasi-Albert model's generative mechanism, which produces scale-free networks under the control of degree. However, the fitness model has not yet been studied in a comprehensive context because most models are built on invariant fitness as the network grows and time-dynamics mainly concern new nodes joining the network. This mainly static consideration restricts fitness in generating scale-free networks only when the underlying fitness distribution is power-law, a fact which makes the hybrid fitness models based on degree-driven preferential attachment to remain the most attractive models in the literature. This paper advances the time-dynamic conceptualization of fitness, by studying scale-free networks generated under topological fitness that changes as the network grows, where the fitness is controlled by degree, clustering coefficient, betweenness, closeness, and eigenvector centrality. The analysis shows that growth under time-dynamic topological fitness is indifferent to the underlying fitness distribution and that different topological fitness generates networks of different topological attributes, ranging from a mesh-like to a superstar-like pattern. The results also show that networks grown under the control of betweenness centrality outperform the other networks in scale-freeness and the majority of the other topological attributes. Overall, this paper contributes to broadening the conceptualization of fitness to a more time-dynamic context.
健身模型被引入文献中,以扩展 Barabasi-Albert 模型的生成机制,该机制在度的控制下产生无标度网络。然而,由于大多数模型都是基于不变的适应性构建的,并且随着网络的增长,时间动态主要关注新节点加入网络,因此适应性模型尚未在全面的背景下进行研究。这种主要的静态考虑将适应性限制在仅在基础适应性分布为幂律时生成无标度网络,这一事实使得基于度驱动的混合适应性模型仍然是文献中最具吸引力的模型。本文通过研究随网络增长而变化的拓扑适应性生成的无标度网络,推进了适应性的时间动态概念化,其中适应性由度、聚类系数、介数、紧密性和特征向量中心度控制。分析表明,在时间动态拓扑适应性下的增长与基础适应性分布无关,不同的拓扑适应性会生成具有不同拓扑属性的网络,从网状到超级巨星状的模式都有。结果还表明,在介数控制下生长的网络在无标度性和大多数其他拓扑属性方面优于其他网络。总的来说,本文有助于将适应性的概念扩展到更具时间动态性的背景。