首页> 外文期刊>Ecological Modelling >Fitting N-mixture models to count data with unmodeled heterogeneity: Bias, diagnostics, and alternative approaches
【24h】

Fitting N-mixture models to count data with unmodeled heterogeneity: Bias, diagnostics, and alternative approaches

机译:拟合N混合模型以计算具有未拼质的异质性的数据:偏差,诊断和替代方法

获取原文
获取原文并翻译 | 示例
       

摘要

Monitoring animal populations is central to wildlife and fisheries management, and the use of N-mixture models toward these efforts has markedly increased in recent years. Nevertheless, relatively little work has evaluated estimator performance when basic assumptions are violated. Moreover, diagnostics to identify when bias in parameter estimates from N-mixture models is likely is largely unexplored. We simulated count data sets using 837 combinations of detection probability, number of sample units, number of survey occasions, and type and extent of heterogeneity in abundance or detectability. We fit Poisson N-mixture models to these data, quantified the bias associated with each combination, and evaluated if the parametric bootstrap goodness-of-fit (GOF) test can be used to indicate bias in parameter estimates. We also explored if assumption violations can be diagnosed prior to fitting N-mixture models. In doing so, we propose a new model diagnostic, which we term the quasi coefficient of variation (QCV). N-mixture models performed well when assumptions were met and detection probabilities were moderate (i.e., = 0.3), and the performance of the estimator improved with increasing survey occasions and sample units. However, the magnitude of bias in estimated mean abundance with even slight amounts of unmodeled heterogeneity was substantial. The parametric bootstrap GOF test did not perform well as a diagnostic for bias in parameter estimates when detectability and sample sizes were low. The results indicate the QCV is useful to diagnose potential bias and that potential bias associated with unidirectional trends in abundance or detectability can be diagnosed using Poisson regression. This study represents the most thorough assessment to date of assumption violations and diagnostics when fitting N-mixture models using the most commonly implemented error distribution. Unbiased estimates of population state variables are needed to properly inform management decisio
机译:监测动物人口是野生动物和渔业管理的核心,近年来,利用N-MILLECT模型对这些努力的使用显着增加。然而,当违反基本假设时,相对较少的工作评估了估计性能。此外,识别何时何时在N-混合模型中的参数估计中偏置何时可能在很大程度上是未开发的。我们使用837检测概率的组合,样本单元数,测量场合数以及丰富或可检测性的异质性的类型和程度的模拟数据集。我们将Poisson N-Millet模型适用于这些数据,量化与每个组合相关的偏置,并且如果参数释放的拟合(GOF)测试可用于指示参数估计中的偏差,则评估。我们还探索了如果在拟合n混合模型之前可以诊断侵犯侵害。在此过程中,我们提出了一种新的模型诊断,我们术语术语阶级变异系数(QCV)。当满足假设并且检测概率中等时然而,估计平均丰度的偏差幅度具有甚至少量未拼接的异质性是显着的。当可检测性和样本尺寸低时,参数释放GOF测试在参数估计中的偏差诊断并未执行。结果表明QCV可用于诊断电位偏差,并且可以使用泊松回归诊断诊断与丰富或可检测性的单向趋势相关的潜在偏差。本研究代表了使用最常用的错误分布拟合N形混合模型时对假设违规和诊断的最新评估。需要非偏见的人口州变量估计,以适当地通知管理决定性

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