Spatial capture–recapture with random thinning for unidentified encounters

Spatial capture–recapture (SCR) models have increasingly been used as a basis for combining capture–recapture data types with variable levels of individual identity information to estimate population density and other demographic parameters. Recent examples are the unmarked SCR (or spatial count mod...

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Bibliographic Details
Published in:Ecology and Evolution
Main Authors: Jiménez, José, Augustine, Ben C., Linden, Daniel W., Chandler, Richard, Royle, J. Andrew
Other Authors: Universidad de Oviedo, Ministerio para la Transición Ecológica y el Reto Demográfico (España)
Format: Article in Journal/Newspaper
Language:English
Published: John Wiley & Sons 2021
Subjects:
Online Access:http://hdl.handle.net/10261/250985
https://doi.org/10.1002/ece3.7091
https://doi.org/10.13039/501100006382
Description
Summary:Spatial capture–recapture (SCR) models have increasingly been used as a basis for combining capture–recapture data types with variable levels of individual identity information to estimate population density and other demographic parameters. Recent examples are the unmarked SCR (or spatial count model), where no individual identities are available and spatial mark–resight (SMR) where individual identities are available for only a marked subset of the population. Currently lacking, though, is a model that allows unidentified samples to be combined with identified samples when there are no separate classes of “marked” and “unmarked” individuals and when the two sample types cannot be considered as arising from two independent observation models. This is a common scenario when using noninvasive sampling methods, for example, when analyzing data on identified and unidentified photographs or scats from the same sites. Here we describe a “random thinning” SCR model that utilizes encounters of both known and unknown identity samples using a natural mechanistic dependence between samples arising from a single observation model. Our model was fitted in a Bayesian framework using NIMBLE. We investigate the improvement in parameter estimates by including the unknown identity samples, which was notable (up to 79% more precise) in low-density populations with a low rate of identified encounters. We then applied the random thinning SCR model to a noninvasive genetic sampling study of brown bear (Ursus arctos) density in Oriental Cantabrian Mountains (North Spain). Our model can improve density estimation for noninvasive sampling studies for low-density populations with low rates of individual identification, by making use of available data that might otherwise be discarded. This research has received financial support from the Spanish Ministry for the Ecological Transition and the Demographic Challenge (Government of Spain). We are grateful to the Brown Bear Foundation (Fundación Oso Pardo), and Raquel Godinho (CIBIO-InBIO, ...