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Uncertainty in site classification and its sensitivity to sample size and indicator quality - Bayesian misclassification rate in ecological risk assessment

机译:场地分类的不确定性及其对样本量和指标质量的敏感性-生态风险评估中的贝叶斯分类错误率

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摘要

The aim of this study was to quantify uncertainty when assigning field investigation sites according to their species community composition to either undisturbed or disturbed reference sites by use of ecological indicators. In ecological risk assessment this problem arises when selecting control investigation sites or defining reference species communities. Uncertainty is quantified using a Type II error or misclassification rate. A probabilistic Bayesian model is used to integrate a priori domain knowledge, assess the error rate and come to recommendations about an adequate sample size. Application is demonstrated using data from a case study investigating off-crop arthropod communities in German grassy field margins and consequences for impact assessment of pesticides on terrestrial ecosystems. The model allows calculating statistical power when using such a classification system. By means of stochastic simulations, recommendations about experimental design and indicator size are derived. The study shows that to develop a classification system to typify newly observed sites a well-balanced ratio of undisturbed and disturbed sites as well as a high relevance of reference sites are needed. For the given data set, a much larger number of reference sites as well as increased relevance of selected reference sites would be needed to achieve a good classification result. An optimal number of indicators is calculated allowing for a compromise between sampling error and indicator quality. Uncertainty for correct assignment of an investigation site is compared using indicators for disturbance and reference conditions. Finally, misclassification rate is proposed as a new measure for indicator quality.
机译:这项研究的目的是在通过生态指标根据野外调查地点将其物种群落组成分配给未受干扰或受干扰的参考地点时,对不确定性进行量化。在生态风险评估中,选择控制调查地点或定义参考物种群落时会出现此问题。使用II型错误或错误分类率对不确定度进行量化。贝叶斯概率模型用于整合先验领域知识,评估错误率并提出有关适当样本量的建议。应用案例研究的数据证明了其应用,该案例研究了德国草地田间的非节肢动物节肢动物群落及其对农药对陆地生态系统影响评估的后果。该模型允许在使用此类分类系统时计算统计功效。通过随机模拟,得出有关实验设计和指标大小的建议。研究表明,要开发一种分类系统来代表新近观察到的站点,就需要不受干扰和受干扰的站点的均衡比例很高,并且需要具有较高相关性的参考站点。对于给定的数据集,将需要大量参考点以及选定参考点的相关性增加,以实现良好的分类结果。计算最佳数量的指标,可以在采样误差和指标质量之间做出折衷。使用干扰指标和参考条件比较正确分配调查地点的不确定性。最后,提出了误分类率作为衡量指标质量的新方法。

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