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首页> 外文期刊>Fisheries Research >Dealing with missing covariate data in fishery stock assessment models
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Dealing with missing covariate data in fishery stock assessment models

机译:在渔业种群评估模型中处理缺失的协变量数据

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Covariates are now commonly used in fisheries stock assessment models to provide additional information about model parameters, but their use can be complicated by missing values. A wide range of covariates have been used (e.g. environment, disease, predation, food, pollutants) to model different processes (e.g. recruitment, natural mortality, growth, catchability). Several approaches are available to deal with missing covariate values. We illustrate a likelihood based approach to deal with missing covariate data when including covariates into fisheries stock assessment models. The method treats the missing covariate values as parameters from a random effects distribution. The parameters of the random effects distribution are estimated based on the observed values of the covariate. The true likelihood is implemented by integrating across the missing value random effect and, in our stock assessment example, a random effect for unexplained variation in recruitment using Laplace approximation. Simulation analysis is used to test the performance of the method and compare it to alternative approaches: (1) ignoring the covariate altogether, (2) ignoring the years with missing covariate values, (3) substituting the missing values with the mean of the observed values, and (4) estimating the missing values as free parameters. We apply the simulation analysis to a linear regression and a statistical catch-at-age stock assessment model. The simulation analysis results indicate that the random effects method for dealing with missing covariate data works moderately well, but it does not provide a substantial benefit over other less complex methods. (C) 2009 Elsevier B.V. All rights reserved.
机译:协变量现在通常用于渔业种群评估模型中,以提供有关模型参数的其他信息,但是由于缺少值,它们的使用可能会变得很复杂。已经使用了各种各样的协变量(例如环境,疾病,被捕食,食物,污染物)来模拟不同的过程(例如募集,自然死亡率,生长,可捕获性)。有几种方法可以处理缺失的协变量值。当将协变量纳入渔业种群评估模型时,我们说明了一种基于可能性的方法来处理缺失的协变量数据。该方法将缺失的协变量值视为来自随机效应分布的参数。基于协变量的观察值估计随机效应分布的参数。真正的可能性是通过对缺失值随机效应和我们的股票评估示例中的随机效应进行积分而实现的,该随机效应是使用拉普拉斯逼近法对招聘中无法解释的变化进行的。仿真分析用于测试该方法的性能并将其与替代方法进行比较:(1)完全忽略协变量,(2)忽略缺少协变量值的年份,(3)用观察到的平均值替换缺失值值,以及(4)将缺失值估计为自由参数。我们将模拟分析应用于线性回归和统计的成年库存评估模型。仿真分析结果表明,用于处理缺失协变量数据的随机效应方法效果中等,但与其他较不复杂的方法相比,并不能提供实质性的收益。 (C)2009 Elsevier B.V.保留所有权利。

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