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TAPRank: A Time-Aware Author Ranking Method in Heterogeneous Networks

机译:TAPRank:异构网络中的时间感知作者排名方法

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摘要

Measuring the impact of authors can not only be a good guidance for new researchers, but also provide a standard for academic foundations and awards. Heterogeneous networks can capture more information about the interactions between entities and they are more and more widely used for the measurement of author impact. However, most of the existing researches take all the papers into the networks as equal, although they have different importance levels. In this paper, we propose a new model: TAPRank, which calculates author impact in author-paper network with considering the PageRank scores of papers for the first time. The PageRank algorithm is implemented in paper citation network, taking the time of publication of each paper into consideration. In addition, the experiments on DBLP dataset show a better performance of TAPRank than other state-of-the-art models.
机译:评估作者的影响不仅可以为新研究人员提供良好的指导,而且可以为学术基础和奖项提供标准。异构网络可以捕获有关实体之间相互作用的更多信息,并且它们越来越广泛地用于评估作者的影响。然而,尽管它们具有不同的重要性级别,但是大多数现有的研究都将所有论文平等地纳入网络。在本文中,我们提出了一个新模型:TAPRank,该模型首次考虑论文的PageRank得分来计算作者对作者-论文网络的影响。 PageRank算法在论文引用网络中实现,同时考虑了每篇论文的发表时间。此外,在DBLP数据集上进行的实验显示出TAPRank的性能要优于其他最新模型。

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