Recommendations for quantitative uncertainty consideration in ecology and evolution
Simmonds, Emily Grace; Adjei, Kwaku Peprah; Cretois, Benjamin; Dickel, Lisa; González-Gil, Ricardo; Laverick, Jack H; Mandeville, Caitlin Marie; Mandeville, Elisabeth G.; Ovaskainen, Otso Tapio; Sicacha Parada, Jorge Armando; Skarstein, Emma; O'Hara, Robert
Peer reviewed, Journal article
Published version
Åpne
Permanent lenke
https://hdl.handle.net/11250/3107744Utgivelsesdato
2023Metadata
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Originalversjon
10.1016/j.tree.2023.10.012Sammendrag
Ecological and evolutionary studies are currently failing to achieve complete and
consistent reporting of model-related uncertainty. We identify three key barriers –
a focus on parameter-related uncertainty, obscure uncertainty metrics, and limited recognition of uncertainty propagation – which have led to gaps in uncertainty
consideration. However, these gaps can be closed. We propose that uncertainty
reporting in ecology and evolution can be improved through wider application of
existing statistical solutions and by adopting good practice from other scientific
fields. Our recommendations include greater consideration of input data and
model structure uncertainties, field-specific uncertainty standards for methods
and reporting, and increased uncertainty propagation through the use of hierarchical models.