论文标题
网络增长模型中节点影响的动力学
Dynamics of node influence in network growth models
论文作者
论文摘要
文献中已经提出了许多网络增长模型,用于捕获现实世界中的复杂网络。现有的研究主要集中于这些模型的全球特征,例如学位分布。我们旨在将重点转向从单个节点的角度研究网络增长动态。在本文中,我们研究网络增长模型中节点影响的指标如何随着网络的发展而随着时间的流逝而行为。我们称之为节点可见性的标准捕获了形成新连接的节点的概率。首先,我们对三种流行的网络增长模型进行了调查 - 优先依恋,添加剂和乘法健身模型;并主要研究“有影响力的节点”或“领导者”,以了解他们的可见性如何随着时间的流逝而演变。随后,我们考虑了一个通用的健身模型,并观察到乘法模型在允许有影响力的节点保持其可见性之间达到平衡,同时使新节点有可能在网络中获得可见性。最后,我们观察到,具有乘法适应性的空间增长模型可以减少有影响力的节点的全球影响力,从而允许网络中的多种“本地领导者”出现。
Many classes of network growth models have been proposed in the literature for capturing real-world complex networks. Existing research primarily focuses on global characteristics of these models, e.g., degree distribution. We aim to shift the focus towards studying the network growth dynamics from the perspective of individual nodes. In this paper, we study how a metric for node influence in network growth models behaves over time as the network evolves. This metric, which we call node visibility, captures the probability of the node to form new connections. First, we conduct an investigation on three popular network growth models -- preferential attachment, additive, and multiplicative fitness models; and primarily look into the "influential nodes" or "leaders" to understand how their visibility evolves over time. Subsequently, we consider a generic fitness model and observe that the multiplicative model strikes a balance between allowing influential nodes to maintain their visibility, while at the same time making it possible for new nodes to gain visibility in the network. Finally, we observe that a spatial growth model with multiplicative fitness can curtail the global reach of influential nodes, thereby allowing the emergence of a multiplicity of "local leaders" in the network.