Journal article
Testing whether ensemble modelling is advantageous for maximising predictive performance of species distribution models
T Hao, J Elith, JJ Lahoz-Monfort, G Guillera-Arroita
Ecography | Published : 2020
DOI: 10.1111/ecog.04890
Abstract
Predictive performance is important to many applications of species distribution models (SDMs). The SDM ‘ensemble’ approach, which combines predictions across different modelling methods, is believed to improve predictive performance, and is used in many recent SDM studies. Here, we aim to compare the predictive performance of ensemble species distribution models to that of individual models, using a large presence–absence dataset of eucalypt tree species. To test model performance, we divided our dataset into calibration and evaluation folds using two spatial blocking strategies (checkerboard-pattern and latitudinal slicing). We calibrated and cross-validated all models within the calibrati..
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Funding Acknowledgements
This work was supported by a Discovery Project grant to Jose J. Lahoz-Monfort and Jane Elith (DP160101003), and a Discovery Early Career Research Award to Gurutzeta Guillera-Arroita DE160100904), both from the Australian Research Council.