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Mining Actor-level Structural and Neighborhood Evolution for Link Prediction in Dynamic Networks

机译:挖掘Actor级结构和邻域演化,以进行动态网络中的链路预测

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Link prediction problem in network science has experienced extensive methodological improvements and simultaneously, spawned over numerous applications. In relation to evolutionary network analysis, different dynamic link prediction methods in network science not only support the prediction of future links but also assist in modelling network dynamics. The concept of constructing dynamic similarity metrics by considering the actor-level evolution of network structure and associated neighborhoods has been widely ignored for the purpose of dynamic link prediction. This study attempts to propose two dynamic similarity metrics for the purpose of dynamic link prediction in longitudinal networks through mining evolutionary information. These metrics consider the similarity between network structural and neighborhood changes over time incident to non-connected actor pairs. These metrics are then used as dynamic features in supervised link prediction model and performances are compared against two baseline static similarity metrics (i.e., AdamicAdar and Katz). Higher performance scores achieved by these features, examined in this study, exemplifies them as prospective candidates not only for dynamic link prediction task but also in understanding the growth pattern of dynamic networks.
机译:网络科学中的链路预测问题经历了广泛的方法改进,并同时产生于众多应用程序中。关于进化网络分析,网络科学中不同的动态链接预测方法不仅支持对未来链接的预测,而且还有助于对网络动力学进行建模。考虑到动态链接预测的目的,通过考虑网络结构和相关邻域的行为者级演进来构造动态相似性度量的概念已被广泛忽略。这项研究试图提出两个动态相似性度量,以通过挖掘进化信息来预测纵向网络中的动态链接。这些度量标准考虑了网络结构和邻域随时间的变化之间的相似性,这些相似性是随时间而发生的,这些非对等的actor对会发生变化。然后将这些指标用作监督链接预测模型中的动态功能,并将性能与两个基线静态相似性指标(即AdamicAdar和Katz)进行比较。通过这些功能获得的较高性能得分(在本研究中进行了检验)将它们作为动态链接预测任务的预期候选者,并且在理解动态网络的增长模式中均作为潜在候选者。

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