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Comparing Bibliometric Analysis Using PubMed, Scopus, and Web of Science Databases
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[Apples with oranges? Comparison of scientometric indicators between fields].

András Schubert1

  • 1Tudománypolitikai és Tudományelemzési Osztály, MTA Könyvtár és Információs Központ Budapest.

Orvosi Hetilap
|April 12, 2016
PubMed
Summary
This summary is machine-generated.

Scientometric indicators vary by research field, hindering comparisons. This paper explores methods to normalize publication counts, citation rates, and h-index for reliable cross-field analysis.

Keywords:
cross-field comparisonindicatorsmutatószámokscientometricsszakterületek közötti összehasonlítástudománymetria

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Area of Science:

  • Bibliometrics and scientometrics
  • Research evaluation
  • Science of science

Background:

  • Scientometric indicators (e.g., publication counts, citation rates, h-index) are field-dependent.
  • This dependency creates reluctance in comparing indicators across diverse research disciplines.
  • Standardized research assessment is crucial for accurate evaluation.

Purpose of the Study:

  • To review and present normalization methods for key scientometric indicators.
  • To enable valid cross-field comparisons of research performance.
  • To address the challenge of field-normalization in bibliometrics.

Main Methods:

  • Review of existing literature on scientometric indicator normalization.
  • Analysis of normalization techniques applicable to publication counts, citation rates, and h-index.
  • Discussion of the feasibility and implications of cross-field comparisons.

Main Results:

  • Normalization techniques can adjust for field-specific variations in scientometric indicators.
  • Adjusted indicators (e.g., normalized citation impact, field-weighted citation impact) facilitate cross-field comparisons.
  • The paper identifies and discusses the most promising normalization approaches.

Conclusions:

  • Normalization is essential for overcoming field-dependent biases in scientometric indicators.
  • Implementing normalized indicators allows for more equitable and accurate cross-field research assessment.
  • This work provides a foundation for improved comparative scientometrics.