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Dealing with data conflicts in statistical inference of population assessment models that integrate information from multiple diverse data sets

机译:处理从多个不同数据集的信息集成信息的人口评估模型中的数据冲突

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Contemporary fisheries stock assessments often use multiple diverse data sets to extract as much information as possible about biological and fishery processes. However, models are, by definition, simplifications of reality and, therefore, misspecified. Model misspecification can cause degradation of results when multiple data sets are analyzed simultaneously. The process, observation, and sampling components of the model must all be, at least, approximately correct to minimize bias. Unfortunately, even the basic processes that are usually considered well understood (e.g., growth and selectivity) are misspecified in most, if not all, stock assessments. These misspecified processes, in combination with use of composition data, result in biased estimates of absolute abundance and abundance trends, which are often evident as "data conflicts." This is compounded by over-weighting of composition data in many assessments owing to misuse of data-weighting approaches. The 'law of conflicting data' states that since data are facts, conflicting data implies model misspecification, but must be interpreted in the context of random sampling error. Down-weighting (or dropping) conflicting data is not necessarily appropriate because it may not resolve the model misspecification. Model misspecification and process variation can be accounted for in the variance parameters of the likelihoods (sampling error), but it is unclear when, or even if, this is appropriate. The appropriate method to deal with data conflicts depends on whether it is caused by random sampling error, process variation, observation model misspecification, or misspecification of the system (dynamics) model. Diagnostic approaches are urgently needed to evaluate goodness of fit and to identify model misspecification. We recommend external estimation of the sampling error variance in likelihood functions, modelling process variation in integrated models, and internal estimation of the standard deviation of the process variation. The required statistical framework is computationally intensive, but practical approximations are available, computational algorithms are being improved, and computer power is increasing. We provide a framework for model development that identifies and corrects model misspecification and illustrate the framework, using simulated data. (C) 2017 Elsevier B.V. All rights reserved.
机译:当代渔业股票评估通常使用多种不同的数据集,以提取尽可能多的信息,以及生物和渔业过程。但是,根据定义,模型是现实的简化,因此,误操作。模型拼写分明会在同时分析多个数据集时导致结果的降低。模型的过程,观察和采样组件必须至少是近似正确的,以最小化偏差。遗憾的是,即使通常被认为很好地理解的基本过程(例如,增长和选择性)也是最遗出的,如果不是全部,股票评估。这些未售出的流程与组合数据的使用相结合,导致绝对丰富和丰度趋势的偏见估计,这些趋势通常被视为“数据冲突”。由于滥用数据加权方法,这将通过在许多评估中过度加权组合数据来复合。 “冲突数据的定律”指出,由于数据是事实,冲突数据意味着模型拼写,但必须在随机采样错误的上下文中解释。触觉加权(或丢弃)冲突数据不一定是适当的,因为它可能无法解决模型拼写。模型拼写和过程变化可以在可能性(采样错误)的方差参数中占,但何时何时,甚至是,这是合适的。处理数据冲突的适当方法取决于它是由随机采样误差,流程变化,观察模型拼写或系统(动态)模型的误操作引起的。迫切需要诊断方法来评估适合的良好并识别模型误操作。我们建议对似然函数中采样误差方差的外部估计,集成模型的建模过程变化,以及过程变化的标准偏差的内部估计。所需的统计框架是计算密集型的,但是实际近似可用,计算算法正在提高,计算机功率正在增加。我们为模型开发提供了一个框架,用于使用模拟数据来识别和纠正模型拼写和说明框架。 (c)2017 Elsevier B.v.保留所有权利。

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