Multi-site mark-recapture population estimates with Bayesian model determination

John Durban, D. Elston, D. K. Ellifrit, E. Dickson, P. S. Hammond, Paul Michael Thompson

Research output: Contribution to journalArticle

17 Citations (Scopus)

Abstract

Mark-recapture techniques are widely used to estimate the size of wildlife populations. However, in cetacean photo-identification studies, it is often impractical to sample across the entire range of the population. Consequently, negatively biased population estimates can result when large portions of a population are unavailable for photographic capture. To overcome this problem, we propose that individuals be sampled from a number of discrete sites located throughout the population's range. The recapture of individuals between sites can then be presented in a simple contingency table, where the cells refer to discrete categories formed by combinations of the study sites. We present a Bayesian framework for fitting a suite of log-linear models to these data, with each model representing a different hypothesis about dependence between sites. Modeling dependence facilitates the analysis of opportunistic photo-identification data from study sites located due to convenience rather than by design. Because inference about population size is sensitive to model choice, we use Bayesian Markov chain Monte Carlo approaches to estimate posterior model probabilities, and base inference on a model-averaged estimate of population size. We demonstrate this method in the analysis of photographic mark-recapture data for bottlenose dolphins from three coastal sites around NE Scotland.

Original languageEnglish
Pages (from-to)80-92
Number of pages12
JournalMarine Mammal Science
Volume21
DOIs
Publication statusPublished - 2005

Keywords

  • mark-recapture
  • model selection
  • model averaging
  • Bayesian analysis
  • Markov Chain Monte Carlo
  • population size
  • CHAIN MONTE-CARLO
  • BOTTLE-NOSED DOLPHINS
  • LOG-LINEAR MODELS
  • CAPTURE-RECAPTURE
  • MANAGEMENT
  • INFERENCE
  • WHALES
  • CENSUS
  • SIZE

Cite this

Multi-site mark-recapture population estimates with Bayesian model determination. / Durban, John; Elston, D.; Ellifrit, D. K.; Dickson, E.; Hammond, P. S.; Thompson, Paul Michael.

In: Marine Mammal Science, Vol. 21, 2005, p. 80-92.

Research output: Contribution to journalArticle

Durban, John ; Elston, D. ; Ellifrit, D. K. ; Dickson, E. ; Hammond, P. S. ; Thompson, Paul Michael. / Multi-site mark-recapture population estimates with Bayesian model determination. In: Marine Mammal Science. 2005 ; Vol. 21. pp. 80-92.
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