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Parameterizations for Bayesian state-space surplus production models

机译:贝叶斯国家空间剩余生产模型的参数化

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摘要

Bayesian state-space surplus production models are commonly applied in fisheries stock assessment when the only information available is an index of relative abundance. However, even relatively simple models such as these can be computationally expensive to fit, and diagnosing poor fits can be difficult. The Stan software package provides an advanced Markov chain Monte Carlo sampler and diagnostics that are not available in other packages for fitting Bayesian models. Here the sampler diagnostics, efficiency, and posterior inferences are compared among multiple parameterizations of a state-space biomass dynamics model, using both Pella-Tomlinson and Schaefer dynamics. Two parameterizations that prevent predictions of negative biomass are introduced, one of which allows for errors in catch. None of the parameterizations used avoid diagnostic warnings using the default sampler parameter values. Choosing the appropriate parameterization of a model, and paying attention to these diagnostics can increase computational efficiency and make inferences more robust.
机译:贝叶斯国家空间剩余生产车型通常适用于渔业股票评估,何时唯一可用信息是相对丰富的指标。然而,即使是相对简单的模型,例如这些模型可以适合计算,并且诊断差的拟合可能很困难。 STAN软件包提供先进的马尔可夫链Monte Carlo采样器和诊断,这些套件不适用于佩戴贝叶斯型号的其他套餐。在这里,使用Pella-Tomlinson和Schaefer动力学的状态空间生物量动力学模型的多个参数,比较采样器诊断,效率和后推推。引入了防止对负生物量预测的两个参数化,其中一个是允许捕获中的错误。没有任何参数化使用使用默认采样器参数值避免诊断警告。选择模型的适当参数化,并关注这些诊断可以提高计算效率并使推断更加强大。

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