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Visualization and analysis of SCImago Journal & Country Rank structure via journal clustering

机译:通过期刊聚类对SCImago期刊和国家排名结构进行可视化和分析

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摘要

Purpose - The purpose of this paper is to visualize the structure of SCImago Journal & Country Rank (SJR) coverage of the extensive citation network of Scopus journals, examining this bibliometric portal through an alternative approach, applying clustering and visualization techniques to a combination of citation-based links. Design/methodology/approach - Three SJR journal-journal networks containing direct citation, co-citation and bibliographic coupling links are built. The three networks were then combined into a new one by summing up their values, which were later normalized through geo-normalization measure. Finally, the VOS clustering algorithm was executed and the journal clusters obtained were labeled using original SJR category tags and significant words from journal titles. Findings - The resultant scientogram displays the SJR structure through a set of communities equivalent to SJR categories that represent the subject contents of the journals they cover. A higher level of aggregation by areas provides a broad view of the SJR structure, facilitating its analysis and visualization at the same time. Originality/value - This is the first study using Persson's combination of most popular citation-based links (direct citation, co-citation and bibliographic coupling) in order to develop a scientogram based on Scopus journals from SJR. The integration of the three measures along with performance of the VOS community detection algorithm gave a balanced set of clusters. The resulting scientogram is useful for assessing and validating previous classifications as well as for information retrieval and domain analysis.
机译:目的-本文的目的是可视化SCI期刊和国家排名(SJR)覆盖Scopus期刊广泛引用网络的结构,通过替代方法检查此文献计量门户,将聚类和可视化技术应用于引文组合基于链接。设计/方法/方法-建立了三个包含直接引文,共引文和书目耦合链接的SJR期刊网络。然后,通过对三个网络的值求和,将其合并为一个新网络,然后通过地理标准化度量对其进行标准化。最后,执行VOS聚类算法,并使用原始SJR类别标签和来自期刊标题的重要单词标记获得的期刊簇。调查结果-结果科学图通过一组等同于SJR类别的社区显示SJR结构,这些类别代表了它们涵盖的期刊的主题内容。按区域划分的更高级别的聚合可提供SJR结构的广泛视图,同时促进其分析和可视化。原创性/价值-这是第一个使用Persson结合最受欢迎的基于引文的链接(直接引文,共引文和书目耦合)进行的研究,目的是根据SJR的Scopus期刊开发科学图。这三种措施的集成以及VOS社区检测算法的性能提供了一组平衡的群集。所得的科学图对于评估和验证先前的分类以及信息检索和领域分析很有用。

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