Myers, B. J. E., Weiskopf, S. R., Shiklomanov, A. N., Ferrier, S., Weng, E., Casey, K. A., Harfoot, M., Jackson, S. T., Leidner, A. K., Lenton, T. M., Luikart, G., Matsuda, H., Pettorelli, N., Rosa, I. M. D., Ruane, A. C., Senay, G. B., Serbin, S. P., Tittensor, D. P., & Douglas Beard, T. (2021). A New Approach to Evaluate and Reduce Uncertainty of Model-Based Biodiversity Projections for Conservation Policy Formulation. BioScience, 71(12), 1261-1273. https://doi.org/10.1093/biosci/biab094
A New Approach to Evaluate and Reduce Uncertainty of Model-Based Biodiversity Projections for Conservation Policy Formulation. / Myers, Bonnie J.E.; Weiskopf, Sarah R.; Shiklomanov, Alexey N. et al.
In:
BioScience, Vol. 71, No. 12, 01.12.2021, p. 1261-1273.
Research output: Contribution to journal › Article › peer-review
Myers, BJE, Weiskopf, SR, Shiklomanov, AN, Ferrier, S, Weng, E, Casey, KA, Harfoot, M, Jackson, ST, Leidner, AK, Lenton, TM, Luikart, G, Matsuda, H, Pettorelli, N, Rosa, IMD, Ruane, AC, Senay, GB, Serbin, SP, Tittensor, DP & Douglas Beard, T 2021, 'A New Approach to Evaluate and Reduce Uncertainty of Model-Based Biodiversity Projections for Conservation Policy Formulation', BioScience, vol. 71, no. 12, pp. 1261-1273. https://doi.org/10.1093/biosci/biab094
Myers BJE, Weiskopf SR, Shiklomanov AN, Ferrier S, Weng E, Casey KA et al. A New Approach to Evaluate and Reduce Uncertainty of Model-Based Biodiversity Projections for Conservation Policy Formulation. BioScience. 2021 Dec 1;71(12):1261-1273. doi: 10.1093/biosci/biab094
Myers, Bonnie J.E. ; Weiskopf, Sarah R. ; Shiklomanov, Alexey N. et al. / A New Approach to Evaluate and Reduce Uncertainty of Model-Based Biodiversity Projections for Conservation Policy Formulation. In: BioScience. 2021 ; Vol. 71, No. 12. pp. 1261-1273.
@article{eac97eb459d34b7dae147d352383c2cc,
title = "A New Approach to Evaluate and Reduce Uncertainty of Model-Based Biodiversity Projections for Conservation Policy Formulation",
abstract = "Biodiversity projections with uncertainty estimates under different climate, land-use, and policy scenarios are essential to setting and achieving international targets to mitigate biodiversity loss. Evaluating and improving biodiversity predictions to better inform policy decisions remains a central conservation goal and challenge. A comprehensive strategy to evaluate and reduce uncertainty of model outputs against observed measurements and multiple models would help to produce more robust biodiversity predictions. We propose an approach that integrates biodiversity models and emerging remote sensing and in-situ data streams to evaluate and reduce uncertainty with the goal of improving policy-relevant biodiversity predictions. In this article, we describe a multivariate approach to directly and indirectly evaluate and constrain model uncertainty, demonstrate a proof of concept of this approach, embed the concept within the broader context of model evaluation and scenario analysis for conservation policy, and highlight lessons from other modeling communities.",
author = "Myers, {Bonnie J.E.} and Weiskopf, {Sarah R.} and Shiklomanov, {Alexey N.} and Simon Ferrier and Ensheng Weng and Casey, {Kimberly A.} and Mike Harfoot and Jackson, {Stephen T.} and Leidner, {Allison K.} and Lenton, {Timothy M.} and Gordon Luikart and Hiroyuki Matsuda and Nathalie Pettorelli and Rosa, {Isabel M.D.} and Ruane, {Alex C.} and Senay, {Gabriel B.} and Serbin, {Shawn P.} and Tittensor, {Derek P.} and {Douglas Beard}, T.",
note = "Publisher Copyright: {\textcopyright} 2021 Published by Oxford University Press on behalf of American Institute of Biological Sciences.",
year = "2021",
month = dec,
day = "1",
doi = "10.1093/biosci/biab094",
language = "English",
volume = "71",
pages = "1261--1273",
journal = "BioScience",
issn = "0006-3568",
publisher = "American Institute of Biological Sciences",
number = "12",
}
TY - JOUR
T1 - A New Approach to Evaluate and Reduce Uncertainty of Model-Based Biodiversity Projections for Conservation Policy Formulation
AU - Myers, Bonnie J.E.
AU - Weiskopf, Sarah R.
AU - Shiklomanov, Alexey N.
AU - Ferrier, Simon
AU - Weng, Ensheng
AU - Casey, Kimberly A.
AU - Harfoot, Mike
AU - Jackson, Stephen T.
AU - Leidner, Allison K.
AU - Lenton, Timothy M.
AU - Luikart, Gordon
AU - Matsuda, Hiroyuki
AU - Pettorelli, Nathalie
AU - Rosa, Isabel M.D.
AU - Ruane, Alex C.
AU - Senay, Gabriel B.
AU - Serbin, Shawn P.
AU - Tittensor, Derek P.
AU - Douglas Beard, T.
N1 - Publisher Copyright:
© 2021 Published by Oxford University Press on behalf of American Institute of Biological Sciences.
PY - 2021/12/1
Y1 - 2021/12/1
N2 - Biodiversity projections with uncertainty estimates under different climate, land-use, and policy scenarios are essential to setting and achieving international targets to mitigate biodiversity loss. Evaluating and improving biodiversity predictions to better inform policy decisions remains a central conservation goal and challenge. A comprehensive strategy to evaluate and reduce uncertainty of model outputs against observed measurements and multiple models would help to produce more robust biodiversity predictions. We propose an approach that integrates biodiversity models and emerging remote sensing and in-situ data streams to evaluate and reduce uncertainty with the goal of improving policy-relevant biodiversity predictions. In this article, we describe a multivariate approach to directly and indirectly evaluate and constrain model uncertainty, demonstrate a proof of concept of this approach, embed the concept within the broader context of model evaluation and scenario analysis for conservation policy, and highlight lessons from other modeling communities.
AB - Biodiversity projections with uncertainty estimates under different climate, land-use, and policy scenarios are essential to setting and achieving international targets to mitigate biodiversity loss. Evaluating and improving biodiversity predictions to better inform policy decisions remains a central conservation goal and challenge. A comprehensive strategy to evaluate and reduce uncertainty of model outputs against observed measurements and multiple models would help to produce more robust biodiversity predictions. We propose an approach that integrates biodiversity models and emerging remote sensing and in-situ data streams to evaluate and reduce uncertainty with the goal of improving policy-relevant biodiversity predictions. In this article, we describe a multivariate approach to directly and indirectly evaluate and constrain model uncertainty, demonstrate a proof of concept of this approach, embed the concept within the broader context of model evaluation and scenario analysis for conservation policy, and highlight lessons from other modeling communities.
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U2 - 10.1093/biosci/biab094
DO - 10.1093/biosci/biab094
M3 - Article
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