Data from: Evaluating predictive performance of statistical models explaining wild bee abundance in a mass-flowering crop

Wild bee populations are threatened by current agricultural practices in many parts of the world, which may put pollination services and crop yields at risk. Loss of pollination services can potentially be predicted by models that link bee abundances with landscape-scale land-use, but there is little knowledge on the degree to which these statistical models are transferable across time and space. This study assesses the transferability of models for wild bee abundance in a mass-flowering crop across space (from one region to another) and across time (from one year to another). The models used existing data on bumblebee and solitary bee abundance in winter oilseed rape fields, together with high-resolution land-use crop-cover and semi-natural habitats data, from studies conducted in five different regions located in four countries (Sweden, Germany, Netherlands, and the UK), in three different years (2011, 2012, 2013). We developed a hierarchical model combining all studies and evaluated the transferability using cross-validation. We found that both the landscape-scale cover of mass-flowering crops and permanent semi-natural habitats, including grasslands and forests, are important drivers of wild bee abundance in all regions. However, while the negative effect of increasing mass-flowering crops on the density of the pollinators is consistent between studies, the direction of the effect of semi-natural habitat is variable between studies. The transferability of these statistical models is limited, especially across regions, but also across time. Our study demonstrates the limits of using statistical models in conjunction with widely available land-use crop-cover classes for extrapolating pollinator density across years and regions, likely in part because input variables such as cover of semi-natural habitats poorly capture variability in pollinator resources between regions and years.

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Main Authors: Blasi Romero, Maria, Bartomeus, Ignasi, Bommarco, Riccardo, Gagic, Vesna, Garratt, Michael, Holzschuh, Andrea, Kleijn, David, Lindström, Sandra A.M., Olsson, Peter, Polce, Chiara, Potts, Simon G., Rundlöf, Maj, Scheper, Jeroen, Smith, Henrik G., Steffan-Dewenter, Ingolf, Clough, Yann
Format: Dataset biblioteca
Published: Dryad
Subjects:Life Science,
Online Access:https://research.wur.nl/en/datasets/data-from-evaluating-predictive-performance-of-statistical-models
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spelling dig-wur-nl-wurpubs-5836842024-06-25 Blasi Romero, Maria Bartomeus, Ignasi Bommarco, Riccardo Gagic, Vesna Garratt, Michael Holzschuh, Andrea Kleijn, David Lindström, Sandra A.M. Olsson, Peter Polce, Chiara Potts, Simon G. Rundlöf, Maj Scheper, Jeroen Smith, Henrik G. Steffan-Dewenter, Ingolf Clough, Yann Dataset Data from: Evaluating predictive performance of statistical models explaining wild bee abundance in a mass-flowering crop 2021 Wild bee populations are threatened by current agricultural practices in many parts of the world, which may put pollination services and crop yields at risk. Loss of pollination services can potentially be predicted by models that link bee abundances with landscape-scale land-use, but there is little knowledge on the degree to which these statistical models are transferable across time and space. This study assesses the transferability of models for wild bee abundance in a mass-flowering crop across space (from one region to another) and across time (from one year to another). The models used existing data on bumblebee and solitary bee abundance in winter oilseed rape fields, together with high-resolution land-use crop-cover and semi-natural habitats data, from studies conducted in five different regions located in four countries (Sweden, Germany, Netherlands, and the UK), in three different years (2011, 2012, 2013). We developed a hierarchical model combining all studies and evaluated the transferability using cross-validation. We found that both the landscape-scale cover of mass-flowering crops and permanent semi-natural habitats, including grasslands and forests, are important drivers of wild bee abundance in all regions. However, while the negative effect of increasing mass-flowering crops on the density of the pollinators is consistent between studies, the direction of the effect of semi-natural habitat is variable between studies. The transferability of these statistical models is limited, especially across regions, but also across time. Our study demonstrates the limits of using statistical models in conjunction with widely available land-use crop-cover classes for extrapolating pollinator density across years and regions, likely in part because input variables such as cover of semi-natural habitats poorly capture variability in pollinator resources between regions and years. Dryad text/html https://research.wur.nl/en/datasets/data-from-evaluating-predictive-performance-of-statistical-models 10.5061/dryad.qrfj6q5c1 https://edepot.wur.nl/548906 Life Science Wageningen University & Research
institution WUR NL
collection DSpace
country Países bajos
countrycode NL
component Bibliográfico
access En linea
databasecode dig-wur-nl
tag biblioteca
region Europa del Oeste
libraryname WUR Library Netherlands
topic Life Science
Life Science
spellingShingle Life Science
Life Science
Blasi Romero, Maria
Bartomeus, Ignasi
Bommarco, Riccardo
Gagic, Vesna
Garratt, Michael
Holzschuh, Andrea
Kleijn, David
Lindström, Sandra A.M.
Olsson, Peter
Polce, Chiara
Potts, Simon G.
Rundlöf, Maj
Scheper, Jeroen
Smith, Henrik G.
Steffan-Dewenter, Ingolf
Clough, Yann
Data from: Evaluating predictive performance of statistical models explaining wild bee abundance in a mass-flowering crop
description Wild bee populations are threatened by current agricultural practices in many parts of the world, which may put pollination services and crop yields at risk. Loss of pollination services can potentially be predicted by models that link bee abundances with landscape-scale land-use, but there is little knowledge on the degree to which these statistical models are transferable across time and space. This study assesses the transferability of models for wild bee abundance in a mass-flowering crop across space (from one region to another) and across time (from one year to another). The models used existing data on bumblebee and solitary bee abundance in winter oilseed rape fields, together with high-resolution land-use crop-cover and semi-natural habitats data, from studies conducted in five different regions located in four countries (Sweden, Germany, Netherlands, and the UK), in three different years (2011, 2012, 2013). We developed a hierarchical model combining all studies and evaluated the transferability using cross-validation. We found that both the landscape-scale cover of mass-flowering crops and permanent semi-natural habitats, including grasslands and forests, are important drivers of wild bee abundance in all regions. However, while the negative effect of increasing mass-flowering crops on the density of the pollinators is consistent between studies, the direction of the effect of semi-natural habitat is variable between studies. The transferability of these statistical models is limited, especially across regions, but also across time. Our study demonstrates the limits of using statistical models in conjunction with widely available land-use crop-cover classes for extrapolating pollinator density across years and regions, likely in part because input variables such as cover of semi-natural habitats poorly capture variability in pollinator resources between regions and years.
format Dataset
topic_facet Life Science
author Blasi Romero, Maria
Bartomeus, Ignasi
Bommarco, Riccardo
Gagic, Vesna
Garratt, Michael
Holzschuh, Andrea
Kleijn, David
Lindström, Sandra A.M.
Olsson, Peter
Polce, Chiara
Potts, Simon G.
Rundlöf, Maj
Scheper, Jeroen
Smith, Henrik G.
Steffan-Dewenter, Ingolf
Clough, Yann
author_facet Blasi Romero, Maria
Bartomeus, Ignasi
Bommarco, Riccardo
Gagic, Vesna
Garratt, Michael
Holzschuh, Andrea
Kleijn, David
Lindström, Sandra A.M.
Olsson, Peter
Polce, Chiara
Potts, Simon G.
Rundlöf, Maj
Scheper, Jeroen
Smith, Henrik G.
Steffan-Dewenter, Ingolf
Clough, Yann
author_sort Blasi Romero, Maria
title Data from: Evaluating predictive performance of statistical models explaining wild bee abundance in a mass-flowering crop
title_short Data from: Evaluating predictive performance of statistical models explaining wild bee abundance in a mass-flowering crop
title_full Data from: Evaluating predictive performance of statistical models explaining wild bee abundance in a mass-flowering crop
title_fullStr Data from: Evaluating predictive performance of statistical models explaining wild bee abundance in a mass-flowering crop
title_full_unstemmed Data from: Evaluating predictive performance of statistical models explaining wild bee abundance in a mass-flowering crop
title_sort data from: evaluating predictive performance of statistical models explaining wild bee abundance in a mass-flowering crop
publisher Dryad
url https://research.wur.nl/en/datasets/data-from-evaluating-predictive-performance-of-statistical-models
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