2024
DOI: 10.1101/2024.08.09.607358
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The Performance and Potential of Deep Learning for Predicting Species Distributions

Benjamin Kellenberger,
Kevin Winner,
Walter Jetz

Abstract: Species distribution models (SDMs) address the whereabouts of species and are central to ecology. Deep learning (DL) is poised to further elevate the already significant role of SDMs in ecology and conservation, but the potential and limitations of this transformation are still largely unassessed.We evaluate DL SDMs for 2,299 terrestrial vertebrate and invertebrate species at continental scale and 1km resolution in a like-for-like comparison with latest implementation of classic SDMs. We compare two DL methods… Show more

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