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首页> 外文期刊>ICES Journal of Marine Science >Auxiliary diagnostic analyses used to detect model misspecification and highlight potential solutions in stock assessments: application to yellowfin tuna in the eastern Pacific Ocean
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Auxiliary diagnostic analyses used to detect model misspecification and highlight potential solutions in stock assessments: application to yellowfin tuna in the eastern Pacific Ocean

机译:用于检测模型误操作和突出股权潜在解决方案的辅助诊断分析:在东太平洋黄鳍金枪鱼的应用

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摘要

Integrated models (IMs) for stock assessment are simultaneously fit to diverse data sets to estimate parameters related to biological and fishery processes. Modelmisspecificationmay appear as contradictory signals in the data about these processes andmay bias the estimate of quantities of interest. Auxiliary diagnostic analysesmay be used to detectmodelmisspecification and highlight potential solutions, but no set of good practices on what to use exist yet. In this study, we illustrate how to use auxiliary diagnostic analyses not only to identify modelmisspecification, but also to understand what data components provided information about abundance. The diagnostic tools included likelihood component profiles on the scaling parameter, age-structured productionmodels, catch-curve analyses, and two novel analyses: empirical selectivity andmonthly depletion models. While the likelihood profile indicated model misspecification, subsequent analyses were required to indicate the causes as unmodelled changes in selectivity and spatial structure of the population. The consistency between the catch-curve models, the monthly depletion models and the IM information on abundance comes from a strong signal shared by several purse-seine fisheries data sets: the length composition data informs absolute abundance while the indices of abundance constrain the trend in relative abundance.
机译:股票评估的集成模型(IMS)同时适合不同的数据集,以估算与生物和渔业过程相关的参数。 ModelMissPecificationMay在关于这些过程中的数据中显示为矛盾信号,并且可以偏向估计感兴趣的数量。辅助诊断局部分析用于检测摩托阶阶段,突出潜在的解决方案,但尚未存在的良好实践。在这项研究中,我们说明了如何使用辅助诊断分析不仅要识别ModelMisSpecification,而且还要了解数据组件提供了有关丰富信息的信息。诊断工具包括缩放参数上的似然组件配置文件,年龄结构化生产术,捕获曲线分析以及两种新的分析:经验选择性和Monthly耗尽模型。虽然可能性简档指出的模型误操作,但需要随后的分析来指示原因作为群体选择性和空间结构中的未刻度变化。 Catch-Curve模型,每月耗尽模型和IM关于丰富的信息之间的一致性来自几个钱包渔业数据集共享的强信号:长度构成数据通知绝对丰富,而丰富的索引限制趋势相对丰富。

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