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A multilevel cross‐classified modelling approach to peer review of grant proposals: the effects of assessor and researcher attributes on assessor ratings

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  • Upali W. Jayasinghe
  • Herbert W. Marsh
  • Nigel Bond

Abstract

Summary. The peer review of grant proposals is very important to academics from all disciplines. Although there is limited research on the reliability of assessments for grant proposals, previously reported single‐rater reliabilities have been disappointingly low (between 0.17 and 0.37). We found that the single‐rater reliability of the overall assessor rating for Australian Research Council grants was 0.21 for social science and humanities (2870 ratings, 1928 assessors and 687 proposals) and 0.19 for science (7153 ratings, 4295 assessors and 1644 proposals). We used a multilevel, cross‐classification approach (level 1, assessor and proposal cross‐classification; level 2, field of study), taking into account that 34% of the assessors evaluated more than one proposal. Researcher‐nominated assessors (those chosen by the authors of the research proposal) gave higher ratings than panel‐nominated assessors chosen by the Australian Research Council, and proposals from more prestigious universities received higher ratings. In the social sciences and humanities, the status of Australian universities had significantly more effect on Australian assessors than on overseas assessors. In science, ratings were higher when assessors rated fewer proposals and apparently had a more limited frame of reference for making such ratings and when researchers were professors rather than non‐professors. Particularly, the methodology of this large scale study is applicable to other forms of peer review (publications, job interviews, awarding of prizes and election to prestigious societies) where peer review is employed as a selection process.

Suggested Citation

  • Upali W. Jayasinghe & Herbert W. Marsh & Nigel Bond, 2003. "A multilevel cross‐classified modelling approach to peer review of grant proposals: the effects of assessor and researcher attributes on assessor ratings," Journal of the Royal Statistical Society Series A, Royal Statistical Society, vol. 166(3), pages 279-300, October.
  • Handle: RePEc:bla:jorssa:v:166:y:2003:i:3:p:279-300
    DOI: 10.1111/1467-985X.00278
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