...
首页> 外文期刊>Fisheries Research >Predicting the age of fish using general and generalized linear models of biometric data: A case study of two estuarine finfish from New South Wales, Australia
【24h】

Predicting the age of fish using general and generalized linear models of biometric data: A case study of two estuarine finfish from New South Wales, Australia

机译:使用生物特征数据的一般线性模型和广义线性模型预测鱼的年龄:以澳大利亚新南威尔士州的两条河口有鳍鱼为例

获取原文
获取原文并翻译 | 示例

摘要

Direct ageing of fish can be a laborious and expensive task when age estimates from a large population are required, and often involves a degree of subjectivity. This study examined the application of general and generalized linear models that predict the age of fish from a range of efficiently and objectively measured covariates. The data sampled were from yellowfin bream (Acanthopagrus australis (Sparidae) (Owen, 1853)) and sand whiting (Sillago ciliata (Sillaginidae) Cuvier, 1829) populations from New South Wales, Australia. The covariates evaluated in the models were fish length, otolith weight, sex and location (the estuary from which the fish were sampled). Akaike Information Criteria were used for model selection and residual plots of the final models revealed a satisfactory fit to the observations. The best fitting model for each species included all covariates. An additional investigation considered whether general and generalized linear models that predict age from two different categories of biometric information outperform age-length keys with respect to subsequent estimates of total mortality from catch-curve analysis. The two categories of biometric information differed in the ease and cost with which the information could be collected. The first category only included fish length and location as covariates, whilst the second category also included otolith weight and sex. It was found that traditional age-length keys outperformed the predictive models that estimated age from only fish length and location, because the results from the models were prone to significant bias. However, when otolith weight and sex were added as covariates to the predictive models, some of them, including a generalized linear model with a Poisson-distributed response variable, performed similarly to the age-length key. Given that otolith weight and the sex of fish are cheaper to quantify than age from a sectioned otolith in many situations, general or generalized linear models may represent a cheaper and faster method of estimating mortality compared to age-length keys. Such models can also easily incorporate the influence of spatial, temporal and demographic variation.
机译:当需要根据大量人口进行年龄估计时,鱼的直接老化可能是一项艰巨而昂贵的工作,并且通常涉及一定程度的主观性。这项研究检查了一般线性模型和广义线性模型的应用,这些模型可以通过一系列有效且客观地测量的协变量来预测鱼的年龄。采样数据来自澳大利亚新南威尔士州的黄鳍(Acanthopagrus australis(Sparidae)(Owen,1853))和白(Sillago ciliata(Sillaginidae)Cuvier,1829)种群。在模型中评估的协变量是鱼的长度,耳石重量,性别和位置(从中取样鱼的河口)。使用Akaike信息标准进行模型选择,最终模型的残差图显示了与观察结果令人满意的拟合度。每个物种的最佳拟合模型包括所有协变量。另一项调查考虑了从两个不同类别的生物特征信息中预测年龄的通用线性模型和广义线性模型相对于随后根据渔获量曲线分析得出的总死亡率估计值是否优于年龄长度键。这两类生物特征信息在收集信息的难易程度和成本上有所不同。第一类仅包括鱼类的长度和位置作为协变量,而第二类也包括耳石的重量和性别。发现传统的年龄长度键优于仅根据鱼的长度和位置来估计年龄的预测模型,因为模型的结果易于产生明显的偏差。但是,将耳石重量和性别作为协变量添加到预测模型时,其中一些函数(包括具有Poisson分布响应变量的广义线性模型)的执行与年龄长度键相似。鉴于在许多情况下耳石的重量和鱼类的性别比年龄更便宜,因此与年龄长度的键相比,一般或广义线性模型可能是一种更便宜,更快的估计死亡率的方法。这样的模型还可以轻松地纳入空间,时间和人口变化的影响。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号