首页> 外文期刊>Canadian Journal of Fisheries and Aquatic Sciences >Consequences of assuming an incorrect error structure in von Bertalanffy growth models: a simulation study
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Consequences of assuming an incorrect error structure in von Bertalanffy growth models: a simulation study

机译:在冯·贝塔朗菲增长模型中假设错误结构错误的后果:模拟研究

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摘要

The underlying sources of growth variability in a population cannot generally be known, so when modelling growth it is important to understand the consequences of assuming an incorrect error structure. In this study, four error models for a von Bertalanffy growth curve with asymptotic length parameter L sub([infinity]) and growth rate parameter k are considered. Simulations are carried out in which data are generated according to one of the models and fitted assuming each of the models to be true. This is done for two types of data: direct age-length and tag-recapture. For direct age- length data, the consequences of not accounting for individual growth variability, or assuming the wrong source of variability, are minor, even when individual variability is high or data coverage is poor. For tag- recapture data, some substantial biases in growth estimates can arise when individual variability exists but is not accounted for. Importantly, however, incorporating variability in just one parameter (be it L sub([infinity]) or k), even if the variability truly stems from the other or both parameters, generally leads to much smaller biases than assuming no individual variability. Often the alternative models cannot be distinguished using standard model selection procedures, so caution is warranted in using model selection to draw inferences about underlying sources of growth variability.
机译:通常无法知道总体中增长变异性的根本原因,因此,在对增长进行建模时,重要的是要理解假设错误的错误结构的后果。在这项研究中,考虑了具有渐近长度参数L sub(infinity)和增长率参数k的von Bertalanffy生长曲线的四个误差模型。进行仿真,其中根据其中一个模型生成数据,并假设每个模型为真进行拟合。对两种类型的数据执行此操作:直接使用期限和捕获标签。对于直接的年龄长度数据,即使个人变异性很高或数据覆盖范围较差,不考虑个体增长变异性或假设变异性来源错误的后果也很小。对于标签捕获数据,当存在个体可变性但没有考虑到个体可变性时,增长估计可能会出现一些重大偏差。然而,重要的是,即使可变性确实是源于另一个或两个参数,即使仅将可变性纳入一个参数(L sub(infinity)或k)中,通常所导致的偏差也要比假设没有单个可变性小得多。通常,无法使用标准模型选择程序来区分替代模型,因此在使用模型选择来推断有关潜在的增长变异性来源时要格外小心。

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