使用向量空间模型和混合相似度度量的作者姓名消歧

T. Arif, R. Ali, M. Asger
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引用次数: 22

摘要

根据人们的名字来区分他们一直是一个复杂的问题,我们希望根据他们的属性在特定领域对人们进行分组的愿望日益增长。尽管经过多年的研究,提出了大量的技术,但名称歧义问题在很大程度上仍未得到解决,迄今提出的技术也面临着这样或那样的问题。对于数字引文中的作者姓名消歧,通常在出版物中可用的附加属性,如电子邮件ID和作者和共同作者的隶属关系,可以在消歧过程中提供很大帮助。向量空间模型传统上应用于信息检索领域,并取得了很大的成功,本文探讨了向量空间模型在作者姓名消歧中的应用。在本文中,我们提出了一个增强的向量空间模型来消除作者及其出版物的歧义。实验结果表明,出版物中存在的附加属性对消除歧义有很大的帮助,并在很大程度上解决了名称歧义问题。从我们的研究和实验结果来看,混合引用和分割引用问题都可以得到很好的处理。我们在评价指标上取得了很大的进步,F1得分为0.97。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Author name disambiguation using vector space model and hybrid similarity measures
Differentiating people on the basis of their names has always been a complex issue and our desire for grouping people, in a particular domain, based on their attributes is growing day by day. Despite years of research and a bunch of proposed techniques, the name ambiguity problem remains largely unsolved and the so far proposed techniques have faced one problem or the other. In case of author name disambiguation in digital citations, additional attributes like e-mail ID and affiliation of author and co-authors, which are normally available in publications, can help a lot in disambiguation process. Vector space model has traditionally been used in information retrieval field with great degree of success and we explore its use in case of author name disambiguation here. In this paper we propose an enhanced vector space model for disambiguating authors and their publications. Experimental results show that additional attributes present in publications can help a lot in disambiguation and solve the name ambiguity problem with a great degree of confidence. From the study we conducted and the experimental results obtained we conclude that both mixed citation and split citations problem can be handled very efficiently. We obtained a great deal of improvement in evaluation metrics obtaining F1 score of 0.97.
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