Dorazio Robert M, Jelks Howard L, Jordan Frank
US Geological Survey, Florida Integrated Science Center, Gainesville, 32653, USA.
Biometrics. 2005 Dec;61(4):1093-101. doi: 10.1111/j.1541-0420.2005.00360.x.
A statistical modeling framework is described for estimating the abundances of spatially distinct subpopulations of animals surveyed using removal sampling. To illustrate this framework, hierarchical models are developed using the Poisson and negative-binomial distributions to model variation in abundance among subpopulations and using the beta distribution to model variation in capture probabilities. These models are fitted to the removal counts observed in a survey of a federally endangered fish species. The resulting estimates of abundance have similar or better precision than those computed using the conventional approach of analyzing the removal counts of each subpopulation separately. Extension of the hierarchical models to include spatial covariates of abundance is straightforward and may be used to identify important features of an animal's habitat or to predict the abundance of animals at unsampled locations.
本文描述了一个统计建模框架,用于估计使用去除抽样法调查的动物在空间上不同亚种群的数量。为了说明这个框架,我们使用泊松分布和负二项分布开发了层次模型,以模拟亚种群间数量的变化,并使用贝塔分布来模拟捕获概率的变化。这些模型被应用于对一种联邦濒危鱼类物种调查中观察到的去除计数数据。由此得到的数量估计值比使用分别分析每个亚种群去除计数的传统方法计算出的估计值具有相似或更高的精度。将层次模型扩展到包含数量的空间协变量很简单,可用于识别动物栖息地的重要特征或预测未抽样地点的动物数量。