Estimating an homogeneous series of a population abundance indicator despite changes in data collection procedure: A hierarchical Bayesian modelling approach

Abundance indicators are required both to assess and to manage wild populations. As new techniques are developed and teams in charge of gathering the data change, data collection procedures (DCPs) can evolve in space and time. How to estimate an homogeneous series of abundance indicator despite chan...

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Main Authors: Brun, Mélanie, Abraham, Christophe, Jarry, Marc, Dumas, Jacques, Lange, Frédéric, Prévost, Etienne
Format: Article in Journal/Newspaper
Language:unknown
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S0304380010006332
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spelling ftrepec:oai:RePEc:eee:ecomod:v:222:y:2011:i:5:p:1069-1079 2024-04-14T08:09:19+00:00 Estimating an homogeneous series of a population abundance indicator despite changes in data collection procedure: A hierarchical Bayesian modelling approach Brun, Mélanie Abraham, Christophe Jarry, Marc Dumas, Jacques Lange, Frédéric Prévost, Etienne http://www.sciencedirect.com/science/article/pii/S0304380010006332 unknown http://www.sciencedirect.com/science/article/pii/S0304380010006332 article ftrepec 2024-03-19T10:30:21Z Abundance indicators are required both to assess and to manage wild populations. As new techniques are developed and teams in charge of gathering the data change, data collection procedures (DCPs) can evolve in space and time. How to estimate an homogeneous series of abundance indicator despite changes in DCP? To tackle this question a hierarchical Bayesian modelling (HBM) approach is proposed. It integrates multiple DCPs in order to derive a single abundance indicator that can be compared over space and time irrespective of the DCP used. Compared to single DCP models, it takes further advantage for abundance estimation of the joint treatment of a larger set of spatio-temporal units. After presenting the general formulation of our HBM approach, it is applied to the juvenile Atlantic salmon (Salmo salar L.) population of the River Nivelle (France). Posterior model checking, using χ2 discrepancy measure, do not reveal any inadequacy between the model and the data. Despite a change in the DCP used (successive removals to catch-per-unit of effort), a unique abundance indicator for the 425 spatio-temporal units (site×year) sampled over twenty-four years (1985–2008) is estimated. The HBM approach allows the assessment of precision of the abundance estimates and shows variation between DCPs: a reduction in precision is observed during the most recent years (2005–2008) when only the catch-per-unit of effort DCP was used. The merits and generality of our HBM approach are discussed. We contend it extends previous single DCP models or inter-calibration of two DCPs, and it could be applied to a wide range of specific situations (taxon and DCPs). Abundance estimation; Long-term monitoring; Heterogeneous index; Data collection; Hierarchical Bayesian modelling; Salmon; Article in Journal/Newspaper Atlantic salmon Salmo salar RePEc (Research Papers in Economics)
institution Open Polar
collection RePEc (Research Papers in Economics)
op_collection_id ftrepec
language unknown
description Abundance indicators are required both to assess and to manage wild populations. As new techniques are developed and teams in charge of gathering the data change, data collection procedures (DCPs) can evolve in space and time. How to estimate an homogeneous series of abundance indicator despite changes in DCP? To tackle this question a hierarchical Bayesian modelling (HBM) approach is proposed. It integrates multiple DCPs in order to derive a single abundance indicator that can be compared over space and time irrespective of the DCP used. Compared to single DCP models, it takes further advantage for abundance estimation of the joint treatment of a larger set of spatio-temporal units. After presenting the general formulation of our HBM approach, it is applied to the juvenile Atlantic salmon (Salmo salar L.) population of the River Nivelle (France). Posterior model checking, using χ2 discrepancy measure, do not reveal any inadequacy between the model and the data. Despite a change in the DCP used (successive removals to catch-per-unit of effort), a unique abundance indicator for the 425 spatio-temporal units (site×year) sampled over twenty-four years (1985–2008) is estimated. The HBM approach allows the assessment of precision of the abundance estimates and shows variation between DCPs: a reduction in precision is observed during the most recent years (2005–2008) when only the catch-per-unit of effort DCP was used. The merits and generality of our HBM approach are discussed. We contend it extends previous single DCP models or inter-calibration of two DCPs, and it could be applied to a wide range of specific situations (taxon and DCPs). Abundance estimation; Long-term monitoring; Heterogeneous index; Data collection; Hierarchical Bayesian modelling; Salmon;
format Article in Journal/Newspaper
author Brun, Mélanie
Abraham, Christophe
Jarry, Marc
Dumas, Jacques
Lange, Frédéric
Prévost, Etienne
spellingShingle Brun, Mélanie
Abraham, Christophe
Jarry, Marc
Dumas, Jacques
Lange, Frédéric
Prévost, Etienne
Estimating an homogeneous series of a population abundance indicator despite changes in data collection procedure: A hierarchical Bayesian modelling approach
author_facet Brun, Mélanie
Abraham, Christophe
Jarry, Marc
Dumas, Jacques
Lange, Frédéric
Prévost, Etienne
author_sort Brun, Mélanie
title Estimating an homogeneous series of a population abundance indicator despite changes in data collection procedure: A hierarchical Bayesian modelling approach
title_short Estimating an homogeneous series of a population abundance indicator despite changes in data collection procedure: A hierarchical Bayesian modelling approach
title_full Estimating an homogeneous series of a population abundance indicator despite changes in data collection procedure: A hierarchical Bayesian modelling approach
title_fullStr Estimating an homogeneous series of a population abundance indicator despite changes in data collection procedure: A hierarchical Bayesian modelling approach
title_full_unstemmed Estimating an homogeneous series of a population abundance indicator despite changes in data collection procedure: A hierarchical Bayesian modelling approach
title_sort estimating an homogeneous series of a population abundance indicator despite changes in data collection procedure: a hierarchical bayesian modelling approach
url http://www.sciencedirect.com/science/article/pii/S0304380010006332
genre Atlantic salmon
Salmo salar
genre_facet Atlantic salmon
Salmo salar
op_relation http://www.sciencedirect.com/science/article/pii/S0304380010006332
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