With Super SDMs (Machine Learning, Open Access Big Data, and The Cloud) towards a more holistic and inclusive inference: Insights from progressing the marginalized case of the world’s squirrel hotspots and coldspots

Author:

Steiner Moriz1,Huettmann Falk2,Bryans Nathan3,Barker Bryan3

Affiliation:

1. IUCN Small Mammal Specialist Group (SMSG), IUCN

2. University of Alaska Fairbanks

3. Oracle for Research

Abstract

AbstractSpecies-habitat associations are correlative, can be quantified, and used for powerful inference. Nowadays, Species Distribution Models (SDMs) play a big role, e.g. using Machine Learning and AI algorithms, but their best-available technical opportunities remain still not used for their potential e.g. in the policy sector. Here we present Super SDMs that invoke ML, OA Big Data, and the Cloud with a workflow for the best-possible inference for the 300+ global squirrel species. Such global Big Data models are especially important for the many marginalized squirrel species and the high number of endangered and data-deficient species in the world, specifically in tropical regions. While our work shows common issues with SDMs and the maxent algorithm (‘Shallow Learning'), here we present a multi-species Big Data SDM template for subsequent ensemble models and generic progress to tackle global species hotspots and cold spots for the best possible outcome.

Publisher

Research Square Platform LLC

Reference63 articles.

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3. Steiner, M., & Huettmann, F. Sustainable Squirrel Conservation: A Modern Re-Assessment of Family Sciuridae. (Springer Nature: Cham, Switzerland 2023).

4. Burgin, C. J., Wilson, D. E., Mittermeier, R. A., Rylands, A. B., Lacher, T. E., & Sechrest, W. Illustrated Checklist of the Mammals of the World. Lynx Ediciones, Barcelona (2020).

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