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Evaluation of estimation quality of a general paradigm for indexing animal abundance when observations are counts

机译:评估计数时对索引动物丰度的一般范式的估计质量的评估

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Relative abundance indices are widely applied to monitor wildlife populations. A general indexing paradigm was developed for structuring data collection and validly conducting analyses. This approach is applicable for many observation metrics, with observations made at stations through the area of interest and repeated over several days. The variance formula for the general index was derived using a linear mixed model, with statistical tests and confidence intervals constructed assuming Gaussian-distributed observations. However, many observation methods, like intrusions to track plots or camera traps, involve counts with many zeroes, producing Poisson like observations. To fill this inferential gap between Gaussian analytical assumptions and Poisson-distributed data we evaluated, via a broad Monte Carlo simulation study, variance estimation and confidence interval coverage when Gaussian statistical inference is applied to data generated from a Poisson distribution. The mixed effects linear model assuming Gaussian observations performed well in estimating variances and confidence intervals when simulated Poisson data were in the range found in field studies (88-96% confidence interval coverage). Estimation improved by increasing the number of observation days. Confidence interval coverage rates performed very well (even with few observation days) when day-to-day variability was small, while effective estimation resulted fora great range in station-to-station variability. These results provide a foundational basis for applying the general indexing paradigm to count data, strengthen the generality of the approach, provide valuable information for study design, and should reassure practitioners about the validity of their analytical inferences when using count data. Published by Elsevier B.V.
机译:相对丰度指数被广泛应用于监测野生动植物种群。开发了通用索引范式,以构建数据收集结构并有效进行分析。这种方法适用于许多观测指标,并且可以在通过感兴趣区域的站点进行观测并重复几天。一般指数的方差公式是使用线性混合模型推导的,其中统计检验和置信区间的构建均假设为高斯分布。但是,许多观察方法,例如入侵追踪轨迹或相机陷阱,都涉及到带有多个零的计数,从而产生类似于泊松的观察结果。为了填补高斯分析假设与Poisson分布数据之间的推论鸿沟,我们通过广泛的蒙特卡洛模拟研究,当将高斯统计推论应用于由Poisson分布生成的数据时,估计了方差估计和置信区间。假设高斯观测值的混合效应线性模型在估算的Poisson数据处于现场研究的范围内(88-96%的置信区间覆盖范围)时,在估计方差和置信区间方面表现良好。通过增加观察天数,估计得以改善。当日常变化较小时,置信区间覆盖率表现很好(即使只有很少的观察天数),而有效的估计导致站点间变化的范围很大。这些结果为将通用索引范式应用于计数数据提供了基础基础,增强了方法的通用性,为研究设计提供了有价值的信息,并应确保从业人员使用计数数据时分析推论的有效性。由Elsevier B.V.发布

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