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A Balanced Repeated Replication Estimator of Sampling Variance for Apparent and Predicted Species Richness

机译:表观和预测物种丰富度的抽样方差的平衡重复复制估计量

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Design-based estimators of the sampling variance for apparent (S-0 = observed) and predicted species richness ((S) over tilde) have been lacking. A balanced repeated replication (BRR) estimator is proposed and recommended for S-0 and (S) over tilde. Good performance of the estimators is demonstrated in two contrasting examples with Monte Carlo (MC) simulations of simple random sampling with fixed area quadrats (plots) for estimating forest tree species richness. Chao and Lee's estimator of species richness was used for (S) over tilde. In BRR a set of half-samples forming an orthogonal design with respect to the inclusion/exclusion of sample records is Used to produce estimates of S-0 and (S) over tilde from the observed half-sample and models for the effect of data-splitting. BRR estimates of the sampling variance of S-0 were close to the MC estimates in the examples from eastern Canada (PROV) and the Barro Colorado Island (BCI) and clearly superior to naive model-based estimates. BRR estimates of (S) over tilde were generally close to their MC counterparts, but in BCI a bias of approximately -10% was seen in small samples (n <= 24). BRR estimates of sampling variance of (S) over tilde in PROV were close to the MC estimates for n <= 60. With larger sample sizes the BRR estimates drifted toward values obtained with Chao and Lee's model-based variance estimator. In BCI the opposite was true. FOR. SCI. 55(3):189-200.
机译:缺乏基于表观的采样方差(S-0 =观察到的)和预测的物种丰富度(对波浪号的(S))的估计器。提出了平衡重复复制(BRR)估计量,并建议对代号S-0和(S)使用代字号。在蒙特卡罗(MC)模拟的两个简单示例中,使用固定面积四边形(样点)进行简单随机采样以估算林木物种丰富度,证明了估算器的良好性能。 Chao和Lee的物种丰富度估算器用于代号(S)上的代字号。在BRR中,一组相对于样本记录的包含/排除形成正交设计的半样本用于根据观察到的半样本和数据影响模型生成代数上的S-0和(S)估计。分裂。 S-0抽样方差的BRR估计值接近加拿大东部(PROV)和Barro Colorado Island(BCI)的示例中的MC估计值,并且明显优于基于天真的模型的估计值。 (S)超过波浪号的BRR估计值通常接近其MC对应值,但在BCI中,小样本中观察到大约-10%的偏差(n <= 24)。 PROV中(S)上波浪线(S)的抽样方差的BRR估计值接近于n <= 60的MC估计值。随着样本量的增加,BRR估计值朝着使用Chao和Lee基于模型的方差估计器获得的值漂移。在BCI中,情况恰恰相反。对于。 SCI。 55(3):189-200。

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