Analyzing complex capture-recapture data in the presence of individual and temporal covariates and model uncertainty.

SUMMARY: We consider the issue of analyzing complex ecological data in the presence of covariate information and model uncertainty. Several issues can arise when analyzing such data, not least the need to take into account where there are missing covariate values. This is most acutely observed in t...

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Main Authors: King, R, Brooks, S, Coulson, T
Format: Journal article
Language:English
Published: 2008
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author King, R
Brooks, S
Coulson, T
author_facet King, R
Brooks, S
Coulson, T
author_sort King, R
collection OXFORD
description SUMMARY: We consider the issue of analyzing complex ecological data in the presence of covariate information and model uncertainty. Several issues can arise when analyzing such data, not least the need to take into account where there are missing covariate values. This is most acutely observed in the presence of time-varying covariates. We consider mark-recapture-recovery data, where the corresponding recapture probabilities are less than unity, so that individuals are not always observed at each capture event. This often leads to a large amount of missing time-varying individual covariate information, because the covariate cannot usually be recorded if an individual is not observed. In addition, we address the problem of model selection over these covariates with missing data. We consider a Bayesian approach, where we are able to deal with large amounts of missing data, by essentially treating the missing values as auxiliary variables. This approach also allows a quantitative comparison of different models via posterior model probabilities, obtained via the reversible jump Markov chain Monte Carlo algorithm. To demonstrate this approach we analyze data relating to Soay sheep, which pose several statistical challenges in fully describing the intricacies of the system.
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spelling oxford-uuid:85291f95-5b4a-48e6-b531-0fb744aefff92022-03-26T21:55:31ZAnalyzing complex capture-recapture data in the presence of individual and temporal covariates and model uncertainty.Journal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:85291f95-5b4a-48e6-b531-0fb744aefff9EnglishSymplectic Elements at Oxford2008King, RBrooks, SCoulson, T SUMMARY: We consider the issue of analyzing complex ecological data in the presence of covariate information and model uncertainty. Several issues can arise when analyzing such data, not least the need to take into account where there are missing covariate values. This is most acutely observed in the presence of time-varying covariates. We consider mark-recapture-recovery data, where the corresponding recapture probabilities are less than unity, so that individuals are not always observed at each capture event. This often leads to a large amount of missing time-varying individual covariate information, because the covariate cannot usually be recorded if an individual is not observed. In addition, we address the problem of model selection over these covariates with missing data. We consider a Bayesian approach, where we are able to deal with large amounts of missing data, by essentially treating the missing values as auxiliary variables. This approach also allows a quantitative comparison of different models via posterior model probabilities, obtained via the reversible jump Markov chain Monte Carlo algorithm. To demonstrate this approach we analyze data relating to Soay sheep, which pose several statistical challenges in fully describing the intricacies of the system.
spellingShingle King, R
Brooks, S
Coulson, T
Analyzing complex capture-recapture data in the presence of individual and temporal covariates and model uncertainty.
title Analyzing complex capture-recapture data in the presence of individual and temporal covariates and model uncertainty.
title_full Analyzing complex capture-recapture data in the presence of individual and temporal covariates and model uncertainty.
title_fullStr Analyzing complex capture-recapture data in the presence of individual and temporal covariates and model uncertainty.
title_full_unstemmed Analyzing complex capture-recapture data in the presence of individual and temporal covariates and model uncertainty.
title_short Analyzing complex capture-recapture data in the presence of individual and temporal covariates and model uncertainty.
title_sort analyzing complex capture recapture data in the presence of individual and temporal covariates and model uncertainty
work_keys_str_mv AT kingr analyzingcomplexcapturerecapturedatainthepresenceofindividualandtemporalcovariatesandmodeluncertainty
AT brookss analyzingcomplexcapturerecapturedatainthepresenceofindividualandtemporalcovariatesandmodeluncertainty
AT coulsont analyzingcomplexcapturerecapturedatainthepresenceofindividualandtemporalcovariatesandmodeluncertainty