首页> 外文期刊>Oikos: A Journal of Ecology >Comparing species richness among assemblages using sample units: why not use extrapolation methods to standardize different sample sizes?
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Comparing species richness among assemblages using sample units: why not use extrapolation methods to standardize different sample sizes?

机译:使用样本单位比较组合中物种的丰富度:为什么不使用外推法来标准化不同的样本量?

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Comparisons of species richness among assemblages using different sample sizes may produce erroneous conclusions due to the strong positive relationship between richness and sample size. A current way of handling the problem is to standardize sample sizes to the size of the smallest sample in the study. A major criticism about this approach is the loss of information contained in the larger samples. A potential way of solving the problem is to apply extrapolation techniques to smaller samples, and produce an estimated species richness expected to occur if sample size were increased to the same size of the largest sample. We evaluated the reliability of 11 potential extrapolation methods over a range of different data sets and magnitudes of extrapolation. The basic approach adopted in the evaluation process was a comparison between the observed richness in a sample and the estimated richness produced by estimators using a sub-sample of the same sample. The Log-Series estimator was the most robust for the range of data sets and sub-sample sizes used, followed closely by Negative Binomial, SO-J1, Logarithmic, Stout and Vandermeer, and Weibull estimators. When applied to a set of independently replicated samples from a species-rich assemblage, 95% confidence intervals of estimates produced by the six best evaluated methods were comparable to those of observed richness in the samples. Performance of estimators tended to be better for species-rich data sets rather than for those which contained few species. Good estimates were found when extrapolating up to 1.8-2.0 times the size of the sample. We suggest that the use of the best evaluated methods within the range of indicated conditions provides a safe solution to the problem of losing information when standardizing different sample sizes to the size of the smallest sample.
机译:使用不同样本量的组合对物种丰富度进行比较可能会得出错误的结论,因为丰富度与样本量之间存在很强的正相关关系。解决问题的当前方法是将样本大小标准化为研究中最小样本的大小。对这种方法的主要批评是较大样本中包含的信息丢失。解决该问题的一种潜在方法是将外推技术应用于较小的样本,并产生一个预期的物种丰富度,如果样本大小增加到最大样本的相同大小,则可能会发生这种情况。我们评估了11种潜在外推方法在一系列不同数据集和外推幅度上的可靠性。评估过程中采用的基本方法是将样本中观察到的丰富度与估算者使用同一样本的子样本所产生的估计丰富度进行比较。对数系列估计器在所使用的数据集和子样本大小范围内最稳健,其次是负二项式,SO-J1,对数,Stout和Vandermeer以及Weibull估计器。当将其应用于一组来自物种丰富的集合的独立复制的样本时,通过六种最佳评估方法得出的估计值的95%置信区间可与观察到的样本丰富度相媲美。对于物种丰富的数据集,估计器的性能往往要好于那些物种很少的数据集。当外推至样本大小的1.8-2.0倍时,可以找到很好的估计。我们建议在指定的条件范围内使用最佳评估的方法可为将不同样本量标准化为最小样本量时丢失信息的问题提供安全的解决方案。

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