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A comprehensive evaluation of predictive performance of 33 species distribution models at species and community levels
- Source :
- Ecological Monographs, vol 89, iss 3, 89:e01370, Ecological Monographs, Norberg, A, Abrego, N, Blanchet, F G, Adler, F R, Anderson, B J, Anttila, J, Araujo, M B, Dallas, T, Dunson, D, Elith, J, Foster, S D, Fox, R, Franklin, J, Godsoe, W, Guisan, A, O'Hara, B, Hill, N A, Holt, R D, Hui, F K C, Husby, M, Kålås, J A, Lehikoinen, A, Luoto, M, Mod, H K, Newell, G, Renner, I, Roslin, T, Soininen, J, Thuiller, W, Vanhatalo, J, Warton, D, White, M, Zimmermann, N E, Gravel, D & Ovaskainen, O 2019, ' A comprehensive evaluation of predictive performance of 33 species distribution models at species and community levels ', Ecological Monographs, vol. 89, no. 3, e01370 . https://doi.org/10.1002/ecm.1370, ECOLOGICAL MONOGRAPHS, vol 89, iss 3, Digital.CSIC. Repositorio Institucional del CSIC, instname, Ecological monographs, Ecological monographs, Ecological Society of America, 2019, 89 (3), ⟨10.1002/ecm.1370⟩
- Publication Year :
- 2019
- Publisher :
- eScholarship, University of California, 2019.
-
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 SDMs in the context of multispecies data, including both joint SDMs that model multiple species together, and stacked SDMs 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.<br />This work was funded by the Research Foundation of the University of Helsinki (A. Norberg), the Academy of Finland (CoE grant 284601 and grant 309581 to O. Ovaskainen, grant 308651 to N. Abrego, grant 1275606 to A. Lehikoinen), the Research Council of Norway (CoE grant 223257), the Jane and Aatos Erkko Foundation, and the Ministry of Science, Innovation and Universities (grant CGL2015‐68438‐P to M. B. Araújo).
- Subjects :
- 0106 biological sciences
Computer science
Calibration (statistics)
RANGE SHIFTS
Species distribution
INCORPORATING SPATIAL AUTOCORRELATION
computer.software_genre
01 natural sciences
Physical Geography and Environmental Geoscience
Taxonomic rank
ComputingMilieux_MISCELLANEOUS
[STAT.AP]Statistics [stat]/Applications [stat.AP]
species interactions
Ecology
NICHE
Contrast (statistics)
BIOTIC INTERACTIONS
STATISTICAL-MODELS
stacked species distribution model
joint species distribution model
[STAT]Statistics [stat]
010601 ecology
[SDE]Environmental Sciences
predictive power
[SDE.MCG]Environmental Sciences/Global Changes
Context (language use)
Machine learning
Matematikk og Naturvitenskap: 400::Zoologiske og botaniske fag: 480::Økologi: 488 [VDP]
Life Below Water
Ecology, Evolution, Behavior and Systematics
1172 Environmental sciences
community modeling
business.industry
Generalized additive model
model performance
Statistical model
environmental filtering
prediction
CLIMATE
SIMULATED DATA
Ecological Applications
IMPROVE PREDICTION
GENERALIZED ADDITIVE-MODELS
community assembly
Species richness
Artificial intelligence
NEURAL-NETWORKS
[SDE.BE]Environmental Sciences/Biodiversity and Ecology
business
computer
Subjects
Details
- ISSN :
- 00129615
- Database :
- OpenAIRE
- Journal :
- Ecological Monographs, vol 89, iss 3, 89:e01370, Ecological Monographs, Norberg, A, Abrego, N, Blanchet, F G, Adler, F R, Anderson, B J, Anttila, J, Araujo, M B, Dallas, T, Dunson, D, Elith, J, Foster, S D, Fox, R, Franklin, J, Godsoe, W, Guisan, A, O'Hara, B, Hill, N A, Holt, R D, Hui, F K C, Husby, M, Kålås, J A, Lehikoinen, A, Luoto, M, Mod, H K, Newell, G, Renner, I, Roslin, T, Soininen, J, Thuiller, W, Vanhatalo, J, Warton, D, White, M, Zimmermann, N E, Gravel, D & Ovaskainen, O 2019, ' A comprehensive evaluation of predictive performance of 33 species distribution models at species and community levels ', Ecological Monographs, vol. 89, no. 3, e01370 . https://doi.org/10.1002/ecm.1370, ECOLOGICAL MONOGRAPHS, vol 89, iss 3, Digital.CSIC. Repositorio Institucional del CSIC, instname, Ecological monographs, Ecological monographs, Ecological Society of America, 2019, 89 (3), ⟨10.1002/ecm.1370⟩
- Accession number :
- edsair.doi.dedup.....fb99d4d0111d3aad851fabb0d425aace
- Full Text :
- https://doi.org/10.1002/ecm.1370