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Clustering Scientific Publications Based on Citation Relations: A Systematic Comparison of Different Methods

机译:基于引用关系对科学出版物进行聚类:不同方法的系统比较

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摘要

Clustering methods are applied regularly in the bibliometric literature to identify research areas or scientific fields. These methods are for instance used to group publications into clusters based on their relations in a citation network. In the network science literature, many clustering methods, often referred to as graph partitioning or community detection techniques, have been developed. Focusing on the problem of clustering the publications in a citation network, we present a systematic comparison of the performance of a large number of these clustering methods. Using a number of different citation networks, some of them relatively small and others very large, we extensively study the statistical properties of the results provided by different methods. In addition, we also carry out an expert-based assessment of the results produced by different methods. The expert-based assessment focuses on publications in the field of scientometrics. Our findings seem to indicate that there is a trade-off between different properties that may be considered desirable for a good clustering of publications. Overall, map equation methods appear to perform best in our analysis, suggesting that these methods deserve more attention from the bibliometric community.
机译:在文献计量文献中经常应用聚类方法来确定研究领域或科学领域。例如,这些方法用于根据出版物在引用网络中的关系将出版物分为几类。在网络科学文献中,已经开发了许多聚类方法,通常称为图划分或社区检测技术。重点关注在引用网络中对出版物进行聚类的问题,我们对大量这些聚类方法的性能进行了系统的比较。我们使用许多不同的引文网络,其中一些相对较小,而另一些则很大,我们广泛研究了通过不同方法提供的结果的统计特性。此外,我们还对通过不同方法产生的结果进行了基于专家的评估。基于专家的评估侧重于科学计量学领域的出版物。我们的发现似乎表明,对于出版物的良好分类,可能会希望在不同属性之间进行权衡。总体而言,地图方程方法在我们的分析中似乎表现最佳,这表明这些方法应引起文献计量学界的更多关注。

著录项

  • 期刊名称 other
  • 作者单位
  • 年(卷),期 -1(11),4
  • 年度 -1
  • 页码 e0154404
  • 总页数 23
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

  • 入库时间 2022-08-21 11:12:38

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