Understanding different types of repeatability and intra-class correlation for an analysis of biological variation

  • Shinichi Nakagawa
  • , David F. Westneat
  • , Ayumi Mizuno
  • , Yimen G. Araya-Ajoy
  • , Barbara Class
  • , Niels J. Dingemanse
  • , Ned A. Dochtermann
  • , Malgorzata Lagisz
  • , Kate L. Laskowski
  • , Joel L. Pick
  • , Denis Réale
  • , Coralie Williams
  • , Jonathan Wright
  • , Holger Schielzeth

Research output: Contribution to journalReview articlepeer-review

Abstract

Repeatability, more generally known as intraclass correlation, represents an important quantity of interest in many scientific fields. It represents a metric for summarizing variance decomposition to identify sources of variation in an outcome of interest (e.g. organismal traits). The estimation of variance components is often achieved through linear mixed-effects models or their extension, generalized linear mixed-effects models. Here, we review variants of calculating repeatabilities from mixed-effects models for a variety of conditions and applications. We also recommend which variant might be appropriate under what conditions, focusing on behavioural biology/ecology examples. However, the decision is ultimately with the researcher, since it depends upon their research question, and there is no one-size-fits-all solution. We also highlight the importance of the scope of inference, which affects how repeatabilities are used and interpreted. We recommend transparent reporting of statistical results, including all variance components, which are the building blocks of repeatability. This review aims to assist empiricists in choosing an appropriate repeatability variant and interpretation concerning their questions and the scope of inference.

Original languageEnglish
Article number20250545
JournalJournal of the Royal Society Interface
Volume23
Issue number234
DOIs
StatePublished - Jan 28 2026

Bibliographical note

Publisher Copyright:
© 2026 The Authors.

Funding

This project was made possible through the grant 'Statistical Quantification of Individual Differences (SQuID)' from the Research Council of Norway INTPART project, grant number 309356, to J.W. S.N. was supported by the Australian Research Council Discovery Grant (DP230101248) and the Canada Excellence Research Chair Program (CERC-2022-00074). D.F.W. was supported by a UNSW Visiting Fellowship during the early development of this project. H.S. was supported by the German Research Foundation (DFG, grant 316099922). N.A.D. was supported by the German Research Foundation (DI 1694/1-2, DI 1694/5-1). Acknowledgements

FundersFunder number
University of New South Wales
Norges Forskningsråd309356
Deutsche Forschungsgemeinschaft316099922, DI 1694/1-2
Australian Research CouncilDP230101248
Canada Excellence Research Chairs, Government of CanadaCERC-2022-00074

    Keywords

    • individual differences
    • intra-class correlation
    • mixed-effects modelling
    • repeatability
    • variance components
    • variance partitioning coefficients

    ASJC Scopus subject areas

    • Biotechnology
    • Biophysics
    • Bioengineering
    • Biochemistry
    • Biomaterials
    • Biomedical Engineering

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