论文标题
建模科学论文的引文轨迹
Modeling Citation Trajectories of Scientific Papers
论文作者
论文摘要
文献中已经提出了几种网络增长模型,这些模型试图纳入引文网络的属性。通常,这些模型旨在保留在现实世界网络中观察到的程度分布。在这项工作中,我们探讨了现有的网络增长模型是否可以实现各个论文所表现出的引文增长的多样性,这是一种新的以节点为中心的属性,最近在跨多个研究领域的引用网络中观察到。从理论上讲,我们从理论上和经验上表明,仅基于程度和/或内在适应性的网络增长模型无法意识到在现实世界中引用网络中观察到的某些时间增长行为。为此,我们提出了两个新的增长模型,这些模型通过适当的依恋机制来定位论文的影响。现实世界中计算机科学和物理领域的实验结果表明,我们提出的模型可以更好地解释引用网络的时间行为,而不是现有模型。
Several network growth models have been proposed in the literature that attempt to incorporate properties of citation networks. Generally, these models aim at retaining the degree distribution observed in real-world networks. In this work, we explore whether existing network growth models can realize the diversity in citation growth exhibited by individual papers - a new node-centric property observed recently in citation networks across multiple domains of research. We theoretically and empirically show that the network growth models which are solely based on degree and/or intrinsic fitness cannot realize certain temporal growth behaviors that are observed in real-world citation networks. To this end, we propose two new growth models that localize the influence of papers through an appropriate attachment mechanism. Experimental results on the real-world citation networks of Computer Science and Physics domains show that our proposed models can better explain the temporal behavior of citation networks than existing models.