Setting biological reference points for Atlantic salmon stocks: transfer of information from data-rich to sparse-data situations by Bayesian hierarchical modelling

Abstract We present an application of Bayesian hierarchical modelling of stock–recruitment (SR) relationships aiming at estimating Biological Reference Points (BRP) for European Atlantic salmon (Salmo salar) stocks. The structure of the hierarchical SR model developed distinguishes two nested levels...

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Published in:ICES Journal of Marine Science
Main Authors: Prévost, Etienne, Parent, Eric, Crozier, Walter, Davidson, Ian, Dumas, Jacques, Gudbergsson, Gudni, Hindar, Kjetil, McGinnity, Phil, MacLean, Julian, Sættem, Leif M
Format: Article in Journal/Newspaper
Language:English
Published: Oxford University Press (OUP) 2003
Subjects:
Online Access:http://dx.doi.org/10.1016/j.icesjms.2003.08.001
http://academic.oup.com/icesjms/article-pdf/60/6/1177/29157038/60-6-1177.pdf
id croxfordunivpr:10.1016/j.icesjms.2003.08.001
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spelling croxfordunivpr:10.1016/j.icesjms.2003.08.001 2024-04-28T08:13:35+00:00 Setting biological reference points for Atlantic salmon stocks: transfer of information from data-rich to sparse-data situations by Bayesian hierarchical modelling Prévost, Etienne Parent, Eric Crozier, Walter Davidson, Ian Dumas, Jacques Gudbergsson, Gudni Hindar, Kjetil McGinnity, Phil MacLean, Julian Sættem, Leif M 2003 http://dx.doi.org/10.1016/j.icesjms.2003.08.001 http://academic.oup.com/icesjms/article-pdf/60/6/1177/29157038/60-6-1177.pdf en eng Oxford University Press (OUP) ICES Journal of Marine Science volume 60, issue 6, page 1177-1193 ISSN 1095-9289 1054-3139 Ecology Aquatic Science Ecology, Evolution, Behavior and Systematics Oceanography journal-article 2003 croxfordunivpr https://doi.org/10.1016/j.icesjms.2003.08.001 2024-04-02T08:05:19Z Abstract We present an application of Bayesian hierarchical modelling of stock–recruitment (SR) relationships aiming at estimating Biological Reference Points (BRP) for European Atlantic salmon (Salmo salar) stocks. The structure of the hierarchical SR model developed distinguishes two nested levels of randomness, within-river and between rivers. It is an extension of the classical Ricker model, where the parameters of the Ricker function are assumed to be different between rivers, but drawn from a common probability distribution conditionally on two covariates: river size and latitude. The output of ultimate interest is the posterior predictive distribution of the SR parameters and their associated BRP for a new river with no SR data. The flexible framework of the Bayesian hierarchical SR analysis is a step towards making the most comprehensive use of detailed stock monitoring programs for improving management advice. Posterior predictive inferences may be imprecise due to the relative paucity of information introduced in the analysis compared to the variability of the stochastic process modeled. Even in such cases, direct extrapolation of results from local data-rich stocks should be dismissed as it can lead to a major underestimation of our uncertainty about management parameters in sparse-data situations. The aggregation of several stocks under a regional complex improves the precision of the posterior predictive inferences. When several stocks are managed jointly, even imprecise knowledge about each component of the aggregate can be valuable. The introduction of covariates to explain between stock variations provides a significant gain in the precision of the posterior predictive inferences. Because we must be able to measure the covariates for all the stocks of interest, i.e. mostly sparse-data cases, the number of covariates which can be used in practice is limited. The definition of the assemblage of stocks which we model as exchangeable units, conditionally on the covariates, remains the most ... Article in Journal/Newspaper Atlantic salmon Salmo salar Oxford University Press ICES Journal of Marine Science 60 6 1177 1193
institution Open Polar
collection Oxford University Press
op_collection_id croxfordunivpr
language English
topic Ecology
Aquatic Science
Ecology, Evolution, Behavior and Systematics
Oceanography
spellingShingle Ecology
Aquatic Science
Ecology, Evolution, Behavior and Systematics
Oceanography
Prévost, Etienne
Parent, Eric
Crozier, Walter
Davidson, Ian
Dumas, Jacques
Gudbergsson, Gudni
Hindar, Kjetil
McGinnity, Phil
MacLean, Julian
Sættem, Leif M
Setting biological reference points for Atlantic salmon stocks: transfer of information from data-rich to sparse-data situations by Bayesian hierarchical modelling
topic_facet Ecology
Aquatic Science
Ecology, Evolution, Behavior and Systematics
Oceanography
description Abstract We present an application of Bayesian hierarchical modelling of stock–recruitment (SR) relationships aiming at estimating Biological Reference Points (BRP) for European Atlantic salmon (Salmo salar) stocks. The structure of the hierarchical SR model developed distinguishes two nested levels of randomness, within-river and between rivers. It is an extension of the classical Ricker model, where the parameters of the Ricker function are assumed to be different between rivers, but drawn from a common probability distribution conditionally on two covariates: river size and latitude. The output of ultimate interest is the posterior predictive distribution of the SR parameters and their associated BRP for a new river with no SR data. The flexible framework of the Bayesian hierarchical SR analysis is a step towards making the most comprehensive use of detailed stock monitoring programs for improving management advice. Posterior predictive inferences may be imprecise due to the relative paucity of information introduced in the analysis compared to the variability of the stochastic process modeled. Even in such cases, direct extrapolation of results from local data-rich stocks should be dismissed as it can lead to a major underestimation of our uncertainty about management parameters in sparse-data situations. The aggregation of several stocks under a regional complex improves the precision of the posterior predictive inferences. When several stocks are managed jointly, even imprecise knowledge about each component of the aggregate can be valuable. The introduction of covariates to explain between stock variations provides a significant gain in the precision of the posterior predictive inferences. Because we must be able to measure the covariates for all the stocks of interest, i.e. mostly sparse-data cases, the number of covariates which can be used in practice is limited. The definition of the assemblage of stocks which we model as exchangeable units, conditionally on the covariates, remains the most ...
format Article in Journal/Newspaper
author Prévost, Etienne
Parent, Eric
Crozier, Walter
Davidson, Ian
Dumas, Jacques
Gudbergsson, Gudni
Hindar, Kjetil
McGinnity, Phil
MacLean, Julian
Sættem, Leif M
author_facet Prévost, Etienne
Parent, Eric
Crozier, Walter
Davidson, Ian
Dumas, Jacques
Gudbergsson, Gudni
Hindar, Kjetil
McGinnity, Phil
MacLean, Julian
Sættem, Leif M
author_sort Prévost, Etienne
title Setting biological reference points for Atlantic salmon stocks: transfer of information from data-rich to sparse-data situations by Bayesian hierarchical modelling
title_short Setting biological reference points for Atlantic salmon stocks: transfer of information from data-rich to sparse-data situations by Bayesian hierarchical modelling
title_full Setting biological reference points for Atlantic salmon stocks: transfer of information from data-rich to sparse-data situations by Bayesian hierarchical modelling
title_fullStr Setting biological reference points for Atlantic salmon stocks: transfer of information from data-rich to sparse-data situations by Bayesian hierarchical modelling
title_full_unstemmed Setting biological reference points for Atlantic salmon stocks: transfer of information from data-rich to sparse-data situations by Bayesian hierarchical modelling
title_sort setting biological reference points for atlantic salmon stocks: transfer of information from data-rich to sparse-data situations by bayesian hierarchical modelling
publisher Oxford University Press (OUP)
publishDate 2003
url http://dx.doi.org/10.1016/j.icesjms.2003.08.001
http://academic.oup.com/icesjms/article-pdf/60/6/1177/29157038/60-6-1177.pdf
genre Atlantic salmon
Salmo salar
genre_facet Atlantic salmon
Salmo salar
op_source ICES Journal of Marine Science
volume 60, issue 6, page 1177-1193
ISSN 1095-9289 1054-3139
op_doi https://doi.org/10.1016/j.icesjms.2003.08.001
container_title ICES Journal of Marine Science
container_volume 60
container_issue 6
container_start_page 1177
op_container_end_page 1193
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