Density dependence in North American ducks

The existence or otherwise of density dependence within a population can have important implications for the management of that population. Here, we use estimates of abundance obtained from annual aerial counts on the major breeding grounds of a variety of North American duck species and use a state...

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Main Authors: Jamieson, L. E., Brooks, S. P.
Format: Article
Language:English
Published: Museu de Ciències Naturals de Barcelona 2004-06-01
Series:Animal Biodiversity and Conservation
Subjects:
Online Access:http://abc.museucienciesjournals.cat/files/ABC-27-1-pp-113-128.pdf
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spelling doaj-48c1cb1dc31c4ccb81ae790efc807b732020-11-25T01:50:33ZengMuseu de Ciències Naturals de BarcelonaAnimal Biodiversity and Conservation1578-665X2004-06-01271113128Density dependence in North American ducksJamieson, L. E.Brooks, S. P.The existence or otherwise of density dependence within a population can have important implications for the management of that population. Here, we use estimates of abundance obtained from annual aerial counts on the major breeding grounds of a variety of North American duck species and use a state space model to separate the observation and ecological system processes. This state space approach allows us to impose a density dependence structure upon the true underlying population rather than on the estimates and we demonstrate the improved robustness of this procedure for detecting density dependence in the population. We adopt a Bayesian approach to model fitting, using Markov chain Monte Carlo (MCMC) methods and use a reversible jump MCMC scheme to calculate posterior model probabilities which assign probabilities to the presence of density dependence within the population, for example. We show how these probabilities can be used either to discriminate between models or to provide model-averaged predictions which fully account for both parameter and model uncertainty. http://abc.museucienciesjournals.cat/files/ABC-27-1-pp-113-128.pdfBayesian approachMarkov chain Monte CarloModel choiceAutoregressiveLogisticState space modelling
collection DOAJ
language English
format Article
sources DOAJ
author Jamieson, L. E.
Brooks, S. P.
spellingShingle Jamieson, L. E.
Brooks, S. P.
Density dependence in North American ducks
Animal Biodiversity and Conservation
Bayesian approach
Markov chain Monte Carlo
Model choice
Autoregressive
Logistic
State space modelling
author_facet Jamieson, L. E.
Brooks, S. P.
author_sort Jamieson, L. E.
title Density dependence in North American ducks
title_short Density dependence in North American ducks
title_full Density dependence in North American ducks
title_fullStr Density dependence in North American ducks
title_full_unstemmed Density dependence in North American ducks
title_sort density dependence in north american ducks
publisher Museu de Ciències Naturals de Barcelona
series Animal Biodiversity and Conservation
issn 1578-665X
publishDate 2004-06-01
description The existence or otherwise of density dependence within a population can have important implications for the management of that population. Here, we use estimates of abundance obtained from annual aerial counts on the major breeding grounds of a variety of North American duck species and use a state space model to separate the observation and ecological system processes. This state space approach allows us to impose a density dependence structure upon the true underlying population rather than on the estimates and we demonstrate the improved robustness of this procedure for detecting density dependence in the population. We adopt a Bayesian approach to model fitting, using Markov chain Monte Carlo (MCMC) methods and use a reversible jump MCMC scheme to calculate posterior model probabilities which assign probabilities to the presence of density dependence within the population, for example. We show how these probabilities can be used either to discriminate between models or to provide model-averaged predictions which fully account for both parameter and model uncertainty.
topic Bayesian approach
Markov chain Monte Carlo
Model choice
Autoregressive
Logistic
State space modelling
url http://abc.museucienciesjournals.cat/files/ABC-27-1-pp-113-128.pdf
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