2018
DOI: 10.1002/ecm.1309
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Model averaging in ecology: a review of Bayesian, information‐theoretic, and tactical approaches for predictive inference

Abstract: In ecology, the true causal structure for a given problem is often not known, and several plausible models and thus model predictions exist. It has been claimed that using weighted averages of these models can reduce prediction error, as well as better reflect model selection uncertainty. These claims, however, are often demonstrated by isolated examples. Analysts must better understand under which conditions model averaging can improve predictions and their uncertainty estimates. Moreover, a large range of di… Show more

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Cited by 272 publications
(225 citation statements)
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References 166 publications
(337 reference statements)
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“…Averaged models are calculated as the conditional average, as recommended by Dormann et al (2018) when evaluating the effects of specific predictors, rather than using the model for prediction. We tested the significance of predictors in the linear mixed models using the Satterthwaite approximation (see Luke 2017).…”
Section: Statistical Analysesmentioning
confidence: 99%
“…Averaged models are calculated as the conditional average, as recommended by Dormann et al (2018) when evaluating the effects of specific predictors, rather than using the model for prediction. We tested the significance of predictors in the linear mixed models using the Satterthwaite approximation (see Luke 2017).…”
Section: Statistical Analysesmentioning
confidence: 99%
“…Projection ensembles are particularly useful to quantify uncertainty and to obtain consensus projections, which are arguably superior to single model projections (Araújo & New, 2007, but see Dormann et al, 2018). Furthermore, if combined with rigorous model validation, projection ensembles can help identifying model designs of relatively high quality.…”
Section: Introductionmentioning
confidence: 99%
“…In both fields, ensembles are used to embrace uncertainties that arise from using different modelsdifferent climate models in climate sciences (see, e.g. Ensembles in macroecology aim at accessing the uncertainties stemming from a range of variable conditions such as input data, type, structure and complexity of the models, their parameters, or climate scenarios (Dormann et al, 2018 Another source of uncertainty is linked to data: all data sets contain limitations of some sort. Araújo & New, 2007;Thuiller, 2003).…”
Section: Un Certaint Y Propag Ati On and B Ia S In Datamentioning
confidence: 99%