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conference paper

Revised Normalization of rare citation events in the context of uptake of research in the non-scientific literature

[version 2; peer review: 2 accepted]

17/07/2023| By
Henrique Henrique Pinheiro,
+ 1
David David Campbell
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Abstract

The citation uptake of research papers in the non-scientific literature is often sparse. It is thus frequently reported as a proportion of cited papers instead of as an average of the papers’ citation counts. Citation-based indicators are commonly normalized by dividing a paper’s citation count (or binary score; 0 = not cited, 1 = cited) by the world average (or proportion) in the corresponding year, field and document type. Such ratio-based method can generate outliers when dealing with the binary scores. At low aggregation levels, these outliers can produce unreliable results. Here, a ratio-based method is compared to one in which the world’s proportion is subtracted from the papers’ scores using a set of universities as units of analysis. This difference-based method has two main advantages: interpretation of results is more transparent/straightforward, and outliers are less problematic, leading to narrower confidence intervals.

Submitted by17 Jul 2023
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  • License: CC BY
  • Review type: Open Review
  • Publication type: Conference Paper
  • Conference: 27th International Conference on Science, Technology and Innovation Indicators (STI 2023)
  • Publisher: International Conference on Science, Technology and Innovation Indicators

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