首页> 外文期刊>Journal of Shellfish Research >Growth models for fisheries: the effect of unbalanced sampling error on model selection, parameter estimation, and biological predictions.
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Growth models for fisheries: the effect of unbalanced sampling error on model selection, parameter estimation, and biological predictions.

机译:渔业增长模型:不平衡抽样误差对模型选择,参数估计和生物学预测的影响。

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Field studies that attempt to estimate the mean growth rates of individuals in a population usually yield unbalanced data and various forms of sampling error. If these data are a poor representation of a population, then the estimates of growth rates may also be unrepresentative of the population. We present an assessment of the performance and uncertainty in 4 growth models - the von Bertalanffy, Gompertz, inverse logistic, and Schnute models - fitted to data with various scenarios of sampling error. The performance of each model was determined by comparing highest likelihoods outcomes to known case outcomes. A Monte Carlo simulation framework was used to generate data consisting of 8 typical scenarios of sampling error common in tag-recapture data. Each growth model was evaluated according to 2 metrics: the error rate (i.e., a metric for model uncertainty) and the prediction error (i.e., the accuracy of biological predictions such as age). Results indicate that an inadequate size range in the data (i.e., a lack of juvenile size classes) would often lead to a high error rate. When negative growth increment data are included, the K parameter of the von Bertalanffy model increased, and the L infinity decreased. The inverse logistic model sometimes produced absurd parameter estimates but nevertheless generated the lowest prediction errors. A high prediction error can potentially have far more serious implications to fishery stock assessments than is currently appreciated. Given widespread use of the von Bertalanffy and Gompertz models, selected solely on the basis of model selection criteria, it is clear that greater care and scrutiny are warranted in the selection of growth models in the presence of sampling error.
机译:试图估计人口中个体平均增长率的现场研究通常会得出不平衡的数据和各种形式的抽样误差。如果这些数据不能很好地代表人口,那么增长率的估计值也可能无法代表人口。我们对四种增长模型的性能和不确定性进行了评估-von Bertalanffy,Gompertz,逆逻辑模型和Schnute模型-适用于具有各种抽样误差情况的数据。每个模型的性能是通过将最高可能性结果与已知病例结果进行比较来确定的。蒙特卡罗模拟框架用于生成数据,该数据由标签捕获数据中常见的8种典型采样误差场景组成。根据2个指标对每种生长模型进行评估:错误率(即模型不确定性的指标)和预测误差(即年龄等生物学预测的准确性)。结果表明,数据中的大小范围不足(即缺乏青少年大小级别)通常会导致较高的错误率。当包含负增长增量数据时,von Bertalanffy模型的K参数增加,而L无穷大减小。逆逻辑模型有时会产生荒谬的参数估计,但仍然产生最低的预测误差。较高的预测误差对渔业资源评估的潜在影响可能比目前认识的严重得多。鉴于仅根据模型选择标准进行选择的von Bertalanffy和Gompertz模型得到了广泛使用,很明显,在存在抽样误差的情况下,增长模型的选择应更加谨慎和严格。

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