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Comparative evaluation of bibliometric content networks by tomographic content analysis: An application to Parkinson's disease

机译:层析内容分析法对文献计量网络的比较评估:在帕金森氏病中的应用

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摘要

To understand the current state of a discipline and to discover new knowledge of a certain theme, one builds bibliometric content networks based on the present knowledge entities. However, such networks can vary according to the collection of data sets relevant to the theme by querying knowledge entities. In this study we classify three different bibliometric content networks. The primary bibliometric network is based on knowledge entities relevant to a keyword of the theme, the secondary network is based on entities associated with the lower concepts of the keyword, and the tertiary network is based on entities influenced by the theme. To explore the content and properties of these networks, we propose a tomographic content analysis that takes a slice-and-dice approach to analyzing the networks. Our findings indicate that the primary network is best suited to understanding the current knowledge on a certain topic, whereas the secondary network is good at discovering new knowledge across fields associated with the topic, and the tertiary network is appropriate for outlining the current knowledge of the topic and relevant studies.
机译:为了了解一门学科的当前状态并发现某个主题的新知识,人们可以基于当前的知识实体构建文献目录网络。但是,通过查询知识实体,此类网络可以根据与主题相关的数据集的收集而变化。在这项研究中,我们对三种不同的文献计量内容网络进行了分类。主要的文献计量网络基于与主题的关键字相关的知识实体,次要的网络基于与关键字的较低概念相关的实体,而第三级的网络则基于受主题影响的实体。为了探索这些网络的内容和属性,我们提出了一种断层扫描内容分析,该方法采用切片法对网络进行分析。我们的发现表明,主要网络最适合于了解有关某个主题的当前知识,而次要网络则善于跨与该主题相关联的领域发现新知识,而第三级网络则适合于概述该主题的当前知识。主题和相关研究。

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    Creative Technology Management, Underwood International College, Yonsei University, Seoul, South Korea;

    Department of Library and Information Science, Kyonggi University, 154-42, Gwanggyosan-ro, Yeongtong-gu, Suwon-si, Gyeonggi-do, South Korea;

    Department of Library and Information Science, Yonsei University, 50 Yonsei-ro, Seodaemun-gu, Seoul, South Korea;

    Department of Library and Information Science, Yonsei University, 50 Yonsei-ro, Seodaemun-gu, Seoul, South Korea;

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