Species distributions models may predict accurately future distributions but poorly how distributions change : A critical perspective on model validation

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 typic...

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Main Authors: Piirainen, Sirke, Lehikoinen, Aleksi, Husby, Magne, Kålås, John Atle, Lindström, Åke, Ovaskainen, Otso
Format: Article in Journal/Newspaper
Language:English
Published: Wiley 2023
Subjects:
Online Access:http://urn.fi/URN:NBN:fi:jyu-202303062011
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author Piirainen, Sirke
Lehikoinen, Aleksi
Husby, Magne
Kålås, John Atle
Lindström, Åke
Ovaskainen, Otso
author_facet Piirainen, Sirke
Lehikoinen, Aleksi
Husby, Magne
Kålås, John Atle
Lindström, Åke
Ovaskainen, Otso
author_sort Piirainen, Sirke
collection JYX - Jyväskylä University Digital Archive
description 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. ...
format Article in Journal/Newspaper
genre Fennoscandia
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institution Open Polar
language English
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op_doi https://doi.org/10.5061/dryad.bzkh189br
op_relation Diversity and Distributions
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https://doi.org/10.5061/dryad.bzkh189br
10.1111/ddi.13687
European Commission
Euroopan komissio
op_rights CC BY 4.0
© 2023 The Authors. Diversity and Distributions published by John Wiley & Sons Ltd.
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spelling ftjyvaeskylaenun:oai:jyx.jyu.fi:123456789/85752 2025-04-13T14:18:32+00:00 Species distributions models may predict accurately future distributions but poorly how distributions change : A critical perspective on model validation Piirainen, Sirke Lehikoinen, Aleksi Husby, Magne Kålås, John Atle Lindström, Åke Ovaskainen, Otso 2023 application/pdf 654-665 fulltext http://urn.fi/URN:NBN:fi:jyu-202303062011 eng eng Wiley Diversity and Distributions 1366-9516 5 29 856506 info:eu-repo/grantAgreement/EC/H2020/856506/EU//LIFEPLAN https://doi.org/10.5061/dryad.bzkh189br 10.1111/ddi.13687 European Commission Euroopan komissio CC BY 4.0 © 2023 The Authors. Diversity and Distributions published by John Wiley & Sons Ltd. openAccess https://creativecommons.org/licenses/by/4.0/ birds climate change Fennoscandia forecasting land use model validation prediction species distribution modelling species traits temporal transferability ennusteet linnut ilmastonmuutokset mallit (mallintaminen) levinneisyys mallintaminen validointi lajit research article http://purl.org/eprint/type/JournalArticle http://purl.org/coar/resource_type/c_2df8fbb1 publishedVersion article A1 2023 ftjyvaeskylaenun https://doi.org/10.5061/dryad.bzkh189br 2025-03-20T05:54:13Z 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. ... Article in Journal/Newspaper Fennoscandia JYX - Jyväskylä University Digital Archive
spellingShingle birds
climate change
Fennoscandia
forecasting
land use
model validation
prediction
species distribution modelling
species traits
temporal transferability
ennusteet
linnut
ilmastonmuutokset
mallit (mallintaminen)
levinneisyys
mallintaminen
validointi
lajit
Piirainen, Sirke
Lehikoinen, Aleksi
Husby, Magne
Kålås, John Atle
Lindström, Åke
Ovaskainen, Otso
Species distributions models may predict accurately future distributions but poorly how distributions change : A critical perspective on model validation
title Species distributions models may predict accurately future distributions but poorly how distributions change : A critical perspective on model validation
title_full Species distributions models may predict accurately future distributions but poorly how distributions change : A critical perspective on model validation
title_fullStr Species distributions models may predict accurately future distributions but poorly how distributions change : A critical perspective on model validation
title_full_unstemmed Species distributions models may predict accurately future distributions but poorly how distributions change : A critical perspective on model validation
title_short Species distributions models may predict accurately future distributions but poorly how distributions change : A critical perspective on model validation
title_sort species distributions models may predict accurately future distributions but poorly how distributions change : a critical perspective on model validation
topic birds
climate change
Fennoscandia
forecasting
land use
model validation
prediction
species distribution modelling
species traits
temporal transferability
ennusteet
linnut
ilmastonmuutokset
mallit (mallintaminen)
levinneisyys
mallintaminen
validointi
lajit
topic_facet birds
climate change
Fennoscandia
forecasting
land use
model validation
prediction
species distribution modelling
species traits
temporal transferability
ennusteet
linnut
ilmastonmuutokset
mallit (mallintaminen)
levinneisyys
mallintaminen
validointi
lajit
url http://urn.fi/URN:NBN:fi:jyu-202303062011