Species distributions models may predict accurately future distributions but poorly how distributions change : A critical perspective on model validation
Piirainen, S., Lehikoinen, A., Husby, M., Kålås, J. A., Lindström, Å., & Ovaskainen, O. (2023). Species distributions models may predict accurately future distributions but poorly how distributions change : A critical perspective on model validation. Diversity and Distributions, 29(5), 654-665. https://doi.org/10.1111/ddi.13687
Published in
Diversity and DistributionsAuthors
Date
2023Copyright
© 2023 The Authors. Diversity and Distributions published by John Wiley & Sons Ltd.
Aim
Species distribution models (SDMs) are widely used to make predictions on how species distributions may change as a response to climatic change. To assess the reliability of those predictions, they need to be critically validated with respect to what they are used for. While ecologists are typically interested in how and where distributions will change, we argue that SDMs have seldom been evaluated in terms of their capacity to predict such change. Instead, typical retrospective validation methods estimate model's ability to predict to only one static time in future. Here, we apply two validation methods, one that predicts and evaluates a static pattern, while the other measures change and compare their estimates of predictive performance.
Location
Fennoscandia.
Methods
We applied a joint SDM to model the distributions of 120 bird species in four model validation settings. We trained models with a dataset from 1975 to 1999 and predicted species' future occurrence and abundance in two ways: for one static time period (2013–2016, ‘static validation’) and for a change between two time periods (difference between 1996–1999 and 2013–2016, ‘change validation’). We then measured predictive performance using correlation between predicted and observed values. We also related predictive performance to species traits.
Results
Even though static validation method evaluated predictive performance as good, change method indicated very poor performance. Predictive performance was not strongly related to any trait.
Main Conclusions
Static validation method might overestimate predictive performance by not revealing the model's inability to predict change events. If species' distributions remain mostly stable, then even an unfit model can predict the near future well due to temporal autocorrelation. We urge caution when working with forecasts of changes in spatial patterns of species occupancy or abundance, even for SDMs that are based on time series datasets unless they are critically validated for forecasting such change.
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Publisher
WileyISSN Search the Publication Forum
1366-9516Keywords
Publication in research information system
https://converis.jyu.fi/converis/portal/detail/Publication/177113461
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Related funder(s)
European CommissionFunding program(s)
ERC European Research Council, H2020
The content of the publication reflects only the author’s view. The funder is not responsible for any use that may be made of the information it contains.
Additional information about funding
We acknowledge the tremendous fieldwork effort made by the volunteers. This research was partly funded through the 2017–2018 Belmont Forum and BiodivERsA joint call for research proposals, under the BiodivScen ERA-Net COFUND programme, and with the funding organizations Academy of Finland (Helsinki: 326338), Swedish Research Council (Lund: 2018-02441), the Research Council of Norway (RCN, NINA: 295767) and the National Science Foundation (CLO, ICER-1927646). The Swedish Bird Survey is supported by grants from the Swedish Environmental Protection Agency, with additional financial and logistic support from the Regional County Boards (Länsstyrelsen). The censuses were carried out within the framework of the Linnaeus-project Centre for Animal Movement Research (CAnMove) and the strategic research environment Biodiversity and Ecosystem Services in a Changing Climate (BECC). The Norwegian Climate and Environment Ministry and the Norwegian Environment Agency finance the Norwegian bird monitoring. Additionally, AL was funded by the Academy of Finland (project 275606). SP was funded by the Finnish Cultural Foundation and the Kone Foundation (grant number 201903886). OO was funded by Academy of Finland (grant no. 309581), Jane and Aatos Erkko Foundation, Research Council of Norway through its Centres of Excellence Funding Scheme (223257), and the European Research Council (ERC) under the European Union's Horizon 2020 research and innovation programme (grant agreement No 856506; ERC-synergy project LIFEPLAN). We acknowledge the E-OBS dataset from the EU-FP6 project UERRA (http://www.uerra.eu) and the Copernicus Climate Change Service, and the data providers in the ECA&D project (https://www.ecad.eu). We thank also the anonymous reviewers. ...License
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