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An urn model for species richness estimation in quadrat sampling from fixed-area populations

机译:固定区域种群四方抽样中物种丰富度估计的模型

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摘要

A simple urn model species richness estimator applicable to quadrat sampling from a fixed-area sessile population composed of N quadrats is proposed. The urn model rests on the assumption that the proportion of quadrats with species that occurred in just one of the n sampled quadrats is proportional to the probability of discovering a new species if one quadrat is added to the sample. The urn model works by making one-step-ahead sequential predictions of new species discoveries for all N - n quadrats not in the original sample. The probability of a new discovery changes dynamically as predictions are made. The urn scheme is repeated a large number of times to yield a resampling distribution of richness from which the mean is obtained as the estimate of richness. The variance of the resampling distribution quantifies the prediction variance. Quantiles (0.025 and 0.975) of the resampling distribution were taken as the upper and lower limit of a 95 per cent confidence interval for the true richness. In simulated low-intensity quadrat sampling from 10 fixed-area populations of forest trees, the urn estimator had the lowest bias and root mean-squared errors and the best coverage of 95 per cent confidence intervals. Attractive 'asymptotic' properties of the urn model were demonstrated with three artificial benchmark populations.
机译:提出了一种简单的模型物种丰富度估计值,适用于从由N个四足动物组成的固定面积无土种群中进行的四足动物采样。 urn模型基于这样的假设:如果在样本中添加了一个四足动物,则仅在n个采样的四足动物之一中出现的具有物种的四足动物的比例与发现新物种的概率成正比。 urn模型的工作原理是对不在原始样本中的所有N-n个直角类动物的新物种发现进行一步一步的顺序预测。新发现的可能性随着做出预测而动态变化。重复进行urn计划多次,以产生丰富度的重采样分布,从中获得平均值作为丰富度的估计值。重采样分布的方差量化了预测方差。重采样分布的分位数(0.025和0.975)被视为真实丰富度的95%置信区间的上限和下限。在从10个固定面积的林木种群进行的模拟低强度四边形抽样中,骨灰盒估计器具有最低的偏差和均方根误差,最大覆盖率是95%的置信区间。用三个人工基准种群证明了n模型的“渐近”特性。

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