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Implications of process error in selectivity for approaches to weighting compositional data in fisheries stock assessments

机译:在渔业股票评估中加权组成数据的选择性中工艺误差的影响

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Lack-of-fit in a stock assessment model can be related to both data weighting and the treatment of process error. Although these contributing factors have been studied separately, interactions between them are potentially problematic. In this study we set up a simple simulation intended to provide general guidance to analysts on the performance of an age-structured model under differing assignments of compositional data weight and process variance. We compared cases where the true sample size is under-, 'right-' or over-weighted, and the degree of process variance (in this case temporal variability in selectivity) is under, correctly, or overestimated. Each case was evaluated with regard to estimation of spawning biomass, and MSY-related quantities. We also explored the effects of the estimation of natural mortality, steepness, as well as incorrectly specifying process error in selectivity when there is none. Results showed that right -weighted estimation models assuming the correct degree of process error performed best in estimating all quantities. Underweighting produced larger relative errors in spawning biomass, particularly when too much process error was allowed. Conversely, overweighting produced larger errors mainly when the degree of process error was underestimated. MSY-related quantities were sensitive to both the estimation of natural mortality, and particularly steepness. We suggest that data weighting and the treatment of process error should not be considered independently: estimation is most likely to be robust when process error is allowed (even if overestimated) and when compositional data are not excessively down-weighted. (C) 2016 Elsevier B.V. All rights reserved.
机译:在股票评估模型中缺乏适合可以与数据加权和处理误差的处理有关。虽然已经单独研究了这些贡献因素,但它们之间的相互作用可能是有问题的。在这项研究中,我们建立了一个简单的模拟,旨在为分析师提供关于在组建数据重量和过程方差的不同分配下性能模型的分析师的一般指导。我们比较了真正的样本大小的情况,“右 - ”或过度加权,并且过程方差程度(在这种情况下选择性的时间变异性)是正确的,或高估的。关于产卵生物质的估计和MSY相关数量的评估每种情况。我们还探讨了自然死亡率,陡峭,陡峭,并且在没有的选择性中不正确地指定过程误差的影响。结果表明,假设估计所有数量的正确处理误差程度的正确估计模型。低重量在产卵生物质中产生更大的相对误差,特别是当允许太多的处理错误时。相反,超重主要产生更大的错误,主要是流程误差程度低估。与自然死亡率的估计和特别陡峭的估计有关的数量敏感。我们建议使用数据加权和处理误差的处理不应独立考虑:估计在允许过程错误时最有可能是强大的(即使高估)以及组成数据不过度加权时。 (c)2016年Elsevier B.v.保留所有权利。

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