Joint species distribution models with imperfect detection for high-dimensional spatial data
Jeffrey W. Doser, Andrew O. Finley, and Sudipto Banerjee

TL;DR
This paper introduces a spatial factor multi-species occupancy model that simultaneously accounts for species correlations, imperfect detection, and spatial autocorrelation, improving predictions in high-dimensional ecological data.
Contribution
The paper develops a novel spatial factor multi-species occupancy model that efficiently handles multiple complexities in large ecological datasets, implemented in an accessible R package.
Findings
Ignoring complexities reduces model performance.
The proposed model outperforms alternatives in simulations.
In a case study, it achieved the highest predictive accuracy.
Abstract
Determining spatial distributions of species and communities are key objectives of ecology and conservation. Joint species distribution models use multi-species detection-nondetection data to estimate species and community distributions. The analysis of such data is complicated by residual correlations between species, imperfect detection, and spatial autocorrelation. While methods exist to accommodate each of these complexities, there are few examples in the literature that address and explore all three complexities simultaneously. Here we developed a spatial factor multi-species occupancy model to explicitly account for species correlations, imperfect detection, and spatial autocorrelation. The proposed model uses a spatial factor dimension reduction approach and Nearest Neighbor Gaussian Processes to ensure computational efficiency for data sets with both a large number of species…
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Taxonomy
TopicsSpecies Distribution and Climate Change · Wildlife Ecology and Conservation · Data-Driven Disease Surveillance
