Probit models for capture-recapture data subject to imperfect detection, individual heterogeneity and misidentification
Brett T. McClintock, Larissa L. Bailey, Brian P. Dreher, William A., Link

TL;DR
This paper introduces a Bayesian probit model for capture-recapture data that accounts for imperfect detection, misidentification, and individual heterogeneity, enabling more accurate population estimates in ecological studies.
Contribution
It develops a novel latent multinomial probit model with a Metropolis-Hastings within Gibbs algorithm to handle complex capture-recapture data with misidentification and heterogeneity.
Findings
Successfully estimated black bear population with evidence of misidentification.
Demonstrated individual heterogeneity in detection and misidentification probabilities.
Provided a flexible Bayesian framework for complex ecological capture-recapture data.
Abstract
As noninvasive sampling techniques for animal populations have become more popular, there has been increasing interest in the development of capture-recapture models that can accommodate both imperfect detection and misidentification of individuals (e.g., due to genotyping error). However, current methods do not allow for individual variation in parameters, such as detection or survival probability. Here we develop misidentification models for capture-recapture data that can simultaneously account for temporal variation, behavioral effects and individual heterogeneity in parameters. To facilitate Bayesian inference using our approach, we extend standard probit regression techniques to latent multinomial models where the dimension and zeros of the response cannot be observed. We also present a novel Metropolis-Hastings within Gibbs algorithm for fitting these models using Markov chain…
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Taxonomy
TopicsWildlife Ecology and Conservation · Fish Ecology and Management Studies · Census and Population Estimation
