首页> 外文期刊>Journal of Environmental Science and Health. A >Bootstrap simulations to estimate relationships between Type Ⅰ error, power, effect size, and appropriate sample numbers for bioassessments of aquatic ecosystems
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Bootstrap simulations to estimate relationships between Type Ⅰ error, power, effect size, and appropriate sample numbers for bioassessments of aquatic ecosystems

机译:引导模拟以估计Ⅰ型误差,电源,效果大小和水生生物系统生物数据系统的适当样本号之间的关系

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The Extended Bootstrap (EB) assessment approach was developed for the examination of relationships of Type I error, power, sample size (n), and effect size (ES) for statistical tests of ecological data. The EB approach was applied to univariate and multivariate statistical analyses of a large data set collected from an ongoing, multiple stressor bioassessment study of watersheds in the Central Valley, San Francisco, and Central Coast areas of California. Benthic metrics were created that either increased or decreased monotonically with stress (toxicants or metrics indicative of habitat quality). Type I errors were stable for all statistical tests that were evaluated. The relationships betweennand ES displayed patterns of "diminishing returns" for all statistical tests: i.e. an increasingly largernwas required to detect decreasingly smaller ES. Nonetheless, then's collected across the watersheds and within a selected watershed were sufficient to detect even small correlations between representative benthic metrics and potential stressors with high power. The power and robustness of a novel method using EB and previously described statistical techniques designed to address multicollinearity were shown to approach those of simpler univariate regressions. Potential applications of the EB approach for experimental design, data assessment and interpretation, and hypothesis testing are discussed.
机译:开发了扩展的举止(EB)评估方法,用于检查I型错误,电源,样本大小(n)和效果大小的关系,用于生态数据的统计测试。 eB方法应用于从加利福尼亚州中央山谷,旧金山和中央海岸地区的流域的正在进行的,多重压力源生物分囊研究中收集的大型数据集的单变量和多变量统计分析。创建了底栖指标,以重应压力(栖息地质量指示的毒物或度量)增加或单调地减少。 I型错误对于评估的所有统计测试稳定。对于所有统计测试的“减少回报”模式之间的关系,即,越来越大的漫游所需的恶劣较小。尽管如此,随后在流域上收集,在选定的流域内足以检测具有高功率的代表性底栖指标与潜在压力源之间的甚至小的相关性。使用EB和先前描述的统计技术的新方法的功率和鲁棒性被证明旨在接近更简单的单变量回归的统计技术。讨论了EB方法的潜在应用,进行了实验设计,数据评估和解释,以及假设检测。

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