A comprehensive evaluation of predictive performance of 33 species distribution models at species and community levels

Anna Norberg(University of Helsinki), Nerea Abrego(University of Helsinki), F. Guillaume Blanchet(Université de Sherbrooke), Frederick R. Adler(University of Utah), Barbara J. Anderson(Manaaki Whenua – Landcare Research), Jani Anttila(University of Helsinki), Miguel B. Araújo(University of Copenhagen), Tad Dallas(University of Helsinki), David B. Dunson(Statistical and Applied Mathematical Sciences Institute), Jane Elith(The University of Melbourne), Scott D. Foster(CSIRO Oceans and Atmosphere), Richard Fox(Butterfly Conservation), Janet Franklin(University of California, Riverside), William Godsoe(Lincoln University), Antoine Guisan(University of Lausanne), Bob O'Hara(Norwegian University of Science and Technology), Nicole Hill(University of Tasmania), Robert D. Holt(University of Florida), Francis K. C. Hui(Australian National University), Magne Husby(Nord University), John Atle Kålås(Norwegian Institute for Nature Research), Aleksi Lehikoinen(University of Helsinki), Miska Luoto(University of Helsinki), Heidi K. Mod(University of Lausanne), Graeme Newell(Arthur Rylah Institute for Environmental Research), Ian Renner(University of Newcastle Australia), Tomas Roslin(University of Helsinki), Janne Soininen(University of Helsinki), Wilfried Thuiller(Centre National de la Recherche Scientifique), Jarno Vanhatalo(University of Helsinki), David I. Warton(UNSW Sydney), Matt White(Arthur Rylah Institute for Environmental Research), Niklaus E. Zimmermann(Swiss Federal Institute for Forest, Snow and Landscape Research), Dominique Gravel(Université de Sherbrooke), Otso Ovaskainen(University of Helsinki)
Ecological Monographs
May 2, 2019
Cited by 552Open Access
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Abstract

Abstract A large array of species distribution model ( SDM ) approaches has been developed for explaining and predicting the occurrences of individual species or species assemblages. Given the wealth of existing models, it is unclear which models perform best for interpolation or extrapolation of existing data sets, particularly when one is concerned with species assemblages. We compared the predictive performance of 33 variants of 15 widely applied and recently emerged SDM s in the context of multispecies data, including both joint SDM s that model multiple species together, and stacked SDM s that model each species individually combining the predictions afterward. We offer a comprehensive evaluation of these SDM approaches by examining their performance in predicting withheld empirical validation data of different sizes representing five different taxonomic groups, and for prediction tasks related to both interpolation and extrapolation. We measure predictive performance by 12 measures of accuracy, discrimination power, calibration, and precision of predictions, for the biological levels of species occurrence, species richness, and community composition. Our results show large variation among the models in their predictive performance, especially for communities comprising many species that are rare. The results do not reveal any major trade‐offs among measures of model performance; the same models performed generally well in terms of accuracy, discrimination, and calibration, and for the biological levels of individual species, species richness, and community composition. In contrast, the models that gave the most precise predictions were not well calibrated, suggesting that poorly performing models can make overconfident predictions. However, none of the models performed well for all prediction tasks. As a general strategy, we therefore propose that researchers fit a small set of models showing complementary performance, and then apply a cross‐validation procedure involving separate data to establish which of these models performs best for the goal of the study.


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