CISO: Species Distribution Modeling Conditioned on Incomplete Species Observations
Hager Radi Abdelwahed, M\'elisande Teng, Robin Zbinden, Laura Pollock, Hugo Larochelle, Devis Tuia, David Rolnick

TL;DR
CISO is a deep learning method that improves species distribution predictions by conditioning on incomplete biotic observations, effectively integrating environmental data and partial species information across different datasets.
Contribution
This paper introduces CISO, a novel deep learning approach that models species distributions conditioned on incomplete biotic data, addressing data sparsity and variability issues in ecological modeling.
Findings
Including partial biotic information enhances predictive accuracy.
CISO outperforms existing methods in species distribution prediction.
Combining data from multiple sources improves model performance.
Abstract
Species distribution models (SDMs) are widely used to predict species' geographic distributions, serving as critical tools for ecological research and conservation planning. Typically, SDMs relate species occurrences to environmental variables representing abiotic factors, such as temperature, precipitation, and soil properties. However, species distributions are also strongly influenced by biotic interactions with other species, which are often overlooked. While some methods partially address this limitation by incorporating biotic interactions, they often assume symmetrical pairwise relationships between species and require consistent co-occurrence data. In practice, species observations are sparse, and the availability of information about the presence or absence of other species varies significantly across locations. To address these challenges, we propose CISO, a deep…
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Taxonomy
TopicsSpecies Distribution and Climate Change · Environmental DNA in Biodiversity Studies · Data Analysis with R
