The predictive value of young and old links in a social network

Hung-Hsuan Chen, David J. Miller, C. Lee Giles
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引用次数: 7

Abstract

Recent studies show that vertex similarity measures are good at predicting link formation over the near term, but are less effective in predicting over the long term. This indicates that, generally, as links age, their degree of influence diminishes. However, few papers have systematically studied this phenomenon. In this paper, we apply a supervised learning approach to study age as a factor for link formation. Experiments on several real-world datasets show that younger links are more informative than older ones in predicting the formation of new links. Since older links become less useful, it might be appropriate to remove them when studying network evolution. Several previously observed network properties and network evolution phenomena, such as "the number of edges grows super-linearly in the number of nodes" and "the diameter is decreasing as the network grows", may need to be reconsidered under a dynamic network model where old, inactive links are removed.
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社交网络中年轻和年老链接的预测价值
最近的研究表明,顶点相似性度量在预测短期内的链接形成方面很好,但在预测长期的链接形成方面效果较差。这表明,一般来说,随着关系的老化,其影响程度会减弱。然而,很少有论文系统地研究这一现象。在本文中,我们采用监督学习方法来研究年龄作为链接形成的一个因素。在几个真实数据集上的实验表明,在预测新链接的形成方面,较年轻的链接比较老的链接提供的信息更多。由于较老的链接变得不那么有用,因此在研究网络进化时删除它们可能是合适的。一些先前观察到的网络特性和网络进化现象,如“边的数量在节点数量中呈超线性增长”和“随着网络的增长,直径正在减少”,可能需要在动态网络模型下重新考虑,在动态网络模型中,旧的、不活跃的链接被删除。
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