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Forecasting species distributions: Correlation does not equal causation

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Sirén, A. P. K., Sutherland, C. S., Karmalkar, A. V., Duveneck, M. J., & Morelli, T. L. (2022). Forecasting species distributions: Correlation does not equal causation. Diversity and Distributions, 28(4), 756–769. https://doi.org/10.1111/ddi.13480

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Abstract (from Diversity and Distributions): Aim Identifying the mechanisms influencing species' distributions is critical for accurate climate change forecasts. However, current approaches are limited by correlative models that cannot distinguish between direct and indirect effects. Location New Hampshire and Vermont, USA. Methods Using causal and correlational models and new theory on range limits, we compared current (2014–2019) and future (2080s) distributions of ecologically important mammalian carnivores and competitors along range limits in the northeastern US under two global climate models (GCMs) and a high-emission scenario (RCP8.5) of projected snow and forest biomass change. Results Our hypothesis that causal models of [...]

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  • National and Regional Climate Adaptation Science Centers
  • Northeast CASC

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citationTypeJournal Article
journalDiversity and Distributions
parts
typeVolume
value28
typeIssue
value4
typeDOI
value10.1111/ddi.13480

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