Abstract

The use of linear mixed effects models (LMMs) is increasingly common in the analysis of biological data. Whilst LMMs offer a flexible approach to modelling a broad range of data types, ecological data are often complex and require complex model structures, and the fitting and interpretation of such models is not always straightforward. The ability to achieve robust biological inference requires that practitioners know how and when to apply these tools. Here, we provide a general overview of current methods for the application of LMMs to biological data, and highlight the typical pitfalls that can be encountered in the statistical modelling process. We tackle several issues regarding methods of model selection, with particular reference to the use of information theory and multi-model inference in ecology. We offer practical solutions and direct the reader to key references that provide further technical detail for those seeking a deeper understanding. This overview should serve as a widely accessible code of best practice for applying LMMs to complex biological problems and model structures, and in doing so improve the robustness of conclusions drawn from studies investigating ecological and evolutionary questions.

Keywords

Computer scienceInferenceRobustness (evolution)Machine learningModel selectionData scienceBiological dataArtificial intelligenceEcologyManagement scienceData miningEngineeringBioinformatics

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Publication Info

Year
2018
Type
article
Volume
6
Pages
e4794-e4794
Citations
1911
Access
Closed

Social Impact

Social media, news, blog, policy document mentions

Citation Metrics

1911
OpenAlex
65
Influential
1615
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Cite This

Xavier A. Harrison, Lynda Donaldson, Maria Correa-Cano et al. (2018). A brief introduction to mixed effects modelling and multi-model inference in ecology. PeerJ , 6 , e4794-e4794. https://doi.org/10.7717/peerj.4794

Identifiers

DOI
10.7717/peerj.4794
PMID
29844961
PMCID
PMC5970551

Data Quality

Data completeness: 86%