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- Title
spOccupancy : An R package for single‐species, multi‐species, and integrated spatial occupancy models.
- Authors
Doser, Jeffrey W.; Finley, Andrew O.; Kéry, Marc; Zipkin, Elise F.
- Abstract
Occupancy modelling is a common approach to assess species distribution patterns, while explicitly accounting for false absences in detection–nondetection data. Numerous extensions of the basic single‐species occupancy model exist to model multiple species, spatial autocorrelation and to integrate multiple data types. However, development of specialized and computationally efficient software to incorporate such extensions, especially for large datasets, is scarce or absent.We introduce the spOccupancy R package designed to fit single‐species and multi‐species spatially explicit occupancy models. We fit all models within a Bayesian framework using Pólya‐Gamma data augmentation, which results in fast and efficient inference. spOccupancy provides functionality for data integration of multiple single‐species detection–nondetection datasets via a joint likelihood framework. The package leverages Nearest Neighbour Gaussian Processes to account for spatial autocorrelation, which enables spatially explicit occupancy modelling for potentially massive datasets (e.g. 1,000s–100,000s of sites).spOccupancy provides user‐friendly functions for data simulation, model fitting, model validation (by posterior predictive checks), model comparison (using information criteria and k‐fold cross‐validation) and out‐of‐sample prediction. We illustrate the package's functionality via a vignette, simulated data analysis and two bird case studies.The spOccupancy package provides a user‐friendly platform to fit a variety of single and multi‐species occupancy models, making it straightforward to address detection biases and spatial autocorrelation in species distribution models even for large datasets.
- Subjects
GAUSSIAN processes; DATA augmentation; DATA integration; SPECIES distribution; MODEL validation; K-nearest neighbor classification
- Publication
Methods in Ecology & Evolution, 2022, Vol 13, Issue 8, p1670
- ISSN
2041-210X
- Publication type
Article
- DOI
10.1111/2041-210X.13897