Literature DB >> 22073653

Poor-data and data-poor species stock assessment using a Bayesian hierarchical approach.

Yan Jiao1, Enric Cortés, Kate Andrews, Feng Guo.   

Abstract

Appropriate inference for stocks or species with low-quality data (poor data) or limited data (data poor) is extremely important. Hierarchical Bayesian methods are especially applicable to small-area, small-sample-size estimation problems because they allow poor-data species to borrow strength from species with good-quality data. We used a hammerhead shark complex as an example to investigate the advantages of using hierarchical Bayesian models in assessing the status of poor-data and data-poor exploited species. The hammerhead shark complex (Sphyrna spp.) along the Atlantic and Gulf of Mexico coasts of the United States is composed of three species: the scalloped hammerhead (S. lewini), the great hammerhead (S. mokarran), and the smooth hammerhead (S. zygaena) sharks. The scalloped hammerhead comprises 70-80% of the catch and has catch and relative abundance data of good quality, whereas great and smooth hammerheads have relative abundance indices that are both limited and of low quality presumably because of low stock density and limited sampling. Four hierarchical Bayesian state-space surplus production models were developed to simulate variability in population growth rates, carrying capacity, and catchability of the species. The results from the hierarchical Bayesian models were considerably more robust than those of the nonhierarchical models. The hierarchical Bayesian approach represents an intermediate strategy between traditional models that assume different population parameters for each species and those that assume all species share identical parameters. Use of the hierarchical Bayesian approach is suggested for future hammerhead shark stock assessments and for modeling fish complexes with species-specific data, because the poor-data species can borrow strength from the species with good data, making the estimation more stable and robust.

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Year:  2011        PMID: 22073653     DOI: 10.1890/10-0526.1

Source DB:  PubMed          Journal:  Ecol Appl        ISSN: 1051-0761            Impact factor:   4.657


  2 in total

1.  Half a century of global decline in oceanic sharks and rays.

Authors:  Nathan Pacoureau; Cassandra L Rigby; Peter M Kyne; Richard B Sherley; Henning Winker; John K Carlson; Sonja V Fordham; Rodrigo Barreto; Daniel Fernando; Malcolm P Francis; Rima W Jabado; Katelyn B Herman; Kwang-Ming Liu; Andrea D Marshall; Riley A Pollom; Evgeny V Romanov; Colin A Simpfendorfer; Jamie S Yin; Holly K Kindsvater; Nicholas K Dulvy
Journal:  Nature       Date:  2021-01-27       Impact factor: 49.962

Review 2.  Oceans of plenty? Challenges, advancements, and future directions for the provision of evidence-based fisheries management advice.

Authors:  Daniel R Goethel; Kristen L Omori; André E Punt; Patrick D Lynch; Aaron M Berger; Carryn L de Moor; Éva E Plagányi; Jason M Cope; Natalie A Dowling; Richard McGarvey; Ann L Preece; James T Thorson; Milani Chaloupka; Sarah Gaichas; Eric Gilman; Sybrand A Hesp; Catherine Longo; Nan Yao; Richard D Methot
Journal:  Rev Fish Biol Fish       Date:  2022-09-15       Impact factor: 6.845

  2 in total

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