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The best of two worlds: using stacked generalization for integrating expert range maps in species distribution models

Julian OeserGeography Department, Humboldt-Universität zu Berlin, Unter den Linden 6, 10099 Berlin, GermanyDamaris ZurellEcology and Macroecology, Inst. for Biochemistry and Biology, University of Potsdam, 14469 Potsdam, GermanyFrieder MayerMuseum für Naturkunde, Leibniz-Institut für Evolutions- und Biodiversitätsforschung, Berlin 10115, GermanyEmrah ÇoramanEurasia Institute of Earth Sciences, Department of Ecology and Evolution, Istanbul Technical University, Maslak, Istanbul 34469, TürkiyeNia ToshkovaNational Museum of Natural History, Bulgarian Academy of Sciences, Sofia 1000, BulgariaStanimira DelevaNational Museum of Natural History, Bulgarian Academy of Sciences, Sofia 1000, BulgariaIoseb NatradzeInstitute of Zoology of Ilia State University, Tbilisi 0162, GeorgiaPetr BendaDepartment of Zoology, Faculty of Science, Charles University in Prague, 128 44 Praha 2, Czech RepublicAstghik GhazaryanDepartment of Zoology, Yerevan State University, Yerevan 0025, ArmeniaSercan IrmakEurasia Institute of Earth Sciences, Department of Ecology and Evolution, Istanbul Technical University, Maslak, Istanbul 34469, TürkiyeNijat HasanovGulnar GuliyevaMariya GritsinaInstitute of Zoology, Academy of Science of Uzbekistan, 100053 Tashkent, UzbekistanTobias KuemmerleGeography Department, Humboldt-Universität zu Berlin, Unter den Linden 6, 10099 Berlin, Germany
ABI

Аннотация

Abstract Species distribution models (SDMs) are powerful tools for assessing suitable habitat across large areas and at fine spatial resolution. Yet, the usefulness of SDMs for mapping species’ realized distributions is often limited, since data biases or missing information on dispersal barriers or biotic interactions hinder them from accurately delineating species’ range limits. One way to overcome this limitation is to integrate SDMs with expert range maps, which provide coarse-scale information on the extent of species’ ranges that is complementary to information offered by SDMs. Here, we propose a new approach for integrating expert range maps in SDMs based on an ensemble method called stacked generalization. Specifically, our approach relies on training a meta-learner regression model using predictions from one or more SDM algorithms alongside the distance of training points to expert-defined ranges as predictor variables. We demonstrate our approach with an occurrence dataset for 49 bat species covering four biodiversity hotspots in the Eastern Mediterranean, Western Asia, and Central Asia. Our approach offers a flexible method to integrate expert range maps with any combination of SDM modeling algorithms, thus facilitating the use of algorithm ensembles. In addition, it provides a novel, data-driven way to account for uncertainty in expert-defined ranges not requiring prior knowledge about their accuracy, which is often lacking. Our approach holds considerable promise for better understanding species distributions, and thus for biogeographical research and conservation planning. In addition, our work highlights the overlooked potential of stacked generalization as an ensemble method in species distribution modeling.

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