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首页> 外文期刊>Fisheries Research >Estimation of gillnet efficiency and selectivity across multiple sampling units: A hierarchical Bayesian analysis using mark-recapture data.
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Estimation of gillnet efficiency and selectivity across multiple sampling units: A hierarchical Bayesian analysis using mark-recapture data.

机译:跨多个采样单位的刺网效率和选择性的估计:使用标记捕获数据的分层贝叶斯分析。

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Fisheries research often involves a repetitive sampling protocol for multiple ecological units (our example is gillnetting of lakes). Estimates of abundance based on catch per unit effort can be erroneous due to lake effects on sampling efficiency. Conversely dividing data into individual lakes may lead to poor inference due to sparse data. Hierarchical Bayesian analysis compromises between these two extreme methods by estimating parameters for an individual lake, but borrowing information from other lakes. We estimated size-selective gillnet efficiency with mark-recapture data across a series of lakes subject to a constant netting effort. Hierarchical Bayesian analysis was able to prevent unrealistic selectivity functions that arose from individual lake analysis. Furthermore, the hierarchical approach was able to derive accurate parameter estimates with very few mark-recaptures in sub-sampled data trials. This paper demonstrates the hierarchical methodology for the estimation of fishery selectivity parameters. The results could be used to derive informative priors for future research which uses the proposed gillnet protocol. [copyright] 2006 Elsevier B.V. All rights reserved.
机译:渔业研究通常涉及针对多个生态单元的重复采样协议(我们的例子是湖泊刺网)。由于湖泊对采样效率的影响,基于每单位工作量捕获量的丰度估计可能是错误的。相反,由于数据稀疏,将数据划分为单个湖泊可能导致推理效果不佳。贝叶斯分层分析通过估计单个湖泊的参数,但借鉴其他湖泊的信息,在这两种极端方法之间折衷。我们通过不断的净结网努力,通过一系列湖泊的标记捕获数据,估计了大小选择性刺网的效率。贝叶斯分层分析能够防止因个别湖泊分析而产生的不切实际的选择性函数。此外,在子采样数据试验中,分层方法能够以极少的标记回收率得出准确的参数估计值。本文演示了用于估计渔业选择性参数的分层方法。结果可用于得出信息先验,以供将来使用拟议的刺网协议进行研究。 [版权] 2006 Elsevier B.V.保留所有权利。

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