Know thy tools! Limits of popular algorithms used for topic reconstruction

IF 4.1 Q1 INFORMATION SCIENCE & LIBRARY SCIENCE
Matthias Held
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引用次数: 2

Abstract

Abstract To reconstruct topics in bibliometric networks, one must use algorithms. Specifically, researchers often apply algorithms from the class of network community detection algorithms (such as the Louvain algorithm) that are general-purpose algorithms not intentionally programmed for a bibliometric task. Each algorithm has specific properties “inscribed,” which distinguish it from the others. It can thus be assumed that different algorithms are more or less suitable for a given bibliometric task. However, the suitability of a specific algorithm when it is applied for topic reconstruction is rarely reflected upon. Why choose this algorithm and not another? In this study, I assess the suitability of four community detection algorithms for topic reconstruction, by first deriving the properties of the phenomenon to be reconstructed—topics—and comparing if these match with the properties of the algorithms. The results suggest that the previous use of these algorithms for bibliometric purposes cannot be justified by their specific suitability for this task.
了解你的工具!主题重构常用算法的局限性
摘要要重构文献计量网络中的主题,必须使用算法。具体而言,研究人员经常应用网络社区检测算法类别中的算法(如Louvain算法),这些算法是通用算法,并非有意为文献计量任务编程。每种算法都有特定的“内接”属性,这些属性将其与其他算法区分开来。因此,可以假设不同的算法或多或少适合于给定的文献计量任务。然而,当特定算法应用于主题重构时,其适用性很少得到反映。为什么选择这个算法而不选择另一个?在这项研究中,我评估了四种社区检测算法对主题重建的适用性,首先推导出要重建的现象的性质——主题——并比较这些性质是否与算法的性质相匹配。结果表明,以前将这些算法用于文献计量目的并不能因为它们对这项任务的特定适用性而证明其合理性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Quantitative Science Studies
Quantitative Science Studies INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
12.10
自引率
12.50%
发文量
46
审稿时长
22 weeks
期刊介绍:
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