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Quantilbasierte Indikatoren für Impact und Publikationsstrategie: Ergebnisse für Deutschland in allen Fachdisziplinen in den Jahren 2000 bis 2011

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  • Donner, Paul
  • Aman, Valeria

Abstract

In der vorliegenden Studie wird die Forschungsperformance Deutschlands unter den einflussreichsten Publikationen in allen Fachgebieten untersucht. Dazu werden Zeitreihen des korrigierten Anteils deutscher Publikationen unter den 10% höchstzitierten Artikeln mit Fehlerbalken dargestellt und ausgewertet. Um die Ergebnisse sowohl detailliert in Spezialdisziplinen als auch auf der Ebene weiter gefasster Wissenschaftsbereiche zu zeigen, werden drei verschiedene Klassifikationen parallel verwendet. Der Anteil hochzitierter Artikel für Deutschland insgesamt stieg von unter 10% im Jahr 2000 auf über 11% im letzen Beobachtungsjahr 2011. International maßgebliche Spitzenforschung findet in Deutschland in den Geowissenschaften, Materialwissenschaften, Umwelt-/Biotechnologie, Physik und Agrarwissenschaften statt. Spezialdisziplinen mit herausragenden Ergebnissen sind Pharmazie, Polymerforschung und Optik. Zudem wurde bestimmt, wie gut es deutschen Wissenschaftlern gelingt, ihre Artikel auch in den laut SNIP-Indikator relevantesten 10% der Fachzeitschriften zu lancieren. Dies gelingt in besonderem Maße in den Bereichen Biologie, Biotechnologie, chemische Verfahrenstechnik, Medizintechnik und Medizin.

Suggested Citation

  • Donner, Paul & Aman, Valeria, 2015. "Quantilbasierte Indikatoren für Impact und Publikationsstrategie: Ergebnisse für Deutschland in allen Fachdisziplinen in den Jahren 2000 bis 2011," Studien zum deutschen Innovationssystem 8-2015, Expertenkommission Forschung und Innovation (EFI) - Commission of Experts for Research and Innovation, Berlin.
  • Handle: RePEc:zbw:efisdi:82015
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    References listed on IDEAS

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