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Identifying Overlapping and Hierarchical Thematic Structures in Networks of Scholarly Papers: A Comparison of Three Approaches

机译:识别学术论文网络中的重叠主题和层次主题结构:三种方法的比较

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摘要

The aim of this paper is to introduce and assess three algorithms for the identification of overlapping thematic structures in networks of papers. We implemented three recently proposed approaches to the identification of overlapping and hierarchical substructures in graphs and applied the corresponding algorithms to a network of 492 information-science papers coupled via their cited sources. The thematic substructures obtained and overlaps produced by the three hierarchical cluster algorithms were compared to a content-based categorisation, which we based on the interpretation of titles, abstracts, and keywords. We defined sets of papers dealing with three topics located on different levels of aggregation: h-index, webometrics, and bibliometrics. We identified these topics with branches in the dendrograms produced by the three cluster algorithms and compared the overlapping topics they detected with one another and with the three predefined paper sets. We discuss the advantages and drawbacks of applying the three approaches to paper networks in research fields.
机译:本文的目的是介绍和评估三种用于识别论文网络中重叠主题结构的算法。我们实施了三种最近提出的方法来识别图形中的重叠和分层子结构,并将相应的算法应用于通过引用来源耦合的492篇信息科学论文的网络。将通过三种层次聚类算法获得的主题子结构和产生的重叠与基于内容的分类进行了比较,该分类基于标题,摘要和关键字的解释。我们定义了涉及三个不同聚合级别的三个主题的论文集:h-index,webometrics和bibliometrics。我们用三个聚类算法产生的树状图中的分支标识了这些主题,并将它们检测到的重叠主题相互之间以及与三个预定义的论文集进行了比较。我们讨论了在研究领域中将这三种方法应用于纸张网络的优缺点。

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