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How to consider fractional counting and field normalization in the statistical modeling of bibliometric data: A multilevel Poisson regression approach

机译:在文献计量统计模型中如何考虑分数计数和场归一化:一种多级泊松回归方法

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The numerical-algorithmic procedures of fractional counting and field normalization are often mentioned as indispensable requirements for bibliometric analyses. Against the background of the increasing importance of statistics in bibliometrics, a multilevel Poisson regression model (level 1: publication, level 2: author) shows possible ways to consider fractional counting and field normalization in a statistical model (fractional counting I). However, due to the assumption of duplicate publications in the data set, the approach is not quite optimal. Therefore, a more advanced approach, a multilevel multiple membership model, is proposed that no longer provides for duplicates (fractional counting II). It is assumed that the citation impact can essentially be attributed to time-stable dispositions of researchers as authors who contribute with different fractions to the success of a publication's citation. The two approaches are applied to bibliometric data for 254 scientists working in social science methodology. A major advantage of fractional counting II is that the results no longer depend on the type of fractional counting (e.g., equal weighting). Differences between authors in rankings are reproduced more clearly than on the basis of percentiles. In addition, the strong importance of field normalization is demonstrated; 60% of the citation variance is explained by field normalization. (C) 2019 The Authors. Published by Elsevier Ltd.
机译:分数计数和场归一化的数字算法程序经常被视为文献计量学分析必不可少的要求。在统计学在文献计量学中日益重要的背景下,多级泊松回归模型(级别1:发布,级别2:作者)显示了在统计模型中考虑分数计数和字段归一化的可能方法(分数计数I)。但是,由于假设数据集中有重复出版物,因此该方法不是很理想。因此,提出了一种更高级的方法,即多级多成员模型,该模型不再提供重复项(分数计数II)。可以认为,引用的影响基本上可以归因于研究人员作为作者的时间稳定倾向,他们为出版物的引用成功做出了不同的贡献。这两种方法被应用于254位从事社会科学方法论研究的科学家的文献计量数据。分数计数II的主要优点是结果不再取决于分数计数的类型(例如,等权重)。比起百分位数,可以更清楚地再现作者之间的排名差异。另外,证明了场规范化的重要性。 60%的引文差异通过场归一化来解释。 (C)2019作者。由Elsevier Ltd.发布

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