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Rarefaction and extrapolation of species richness using an area‐based Fishers logseries

机译:使用基于面积的Fisher对数级数对物种丰富度进行反提取和外推

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摘要

Fisher's logseries is widely used to characterize species abundance pattern, and some previous studies used it to predict species richness. However, this model, derived from the negative binomial model, degenerates at the zero‐abundance point (i.e., its probability mass fully concentrates at zero abundance, leading to an odd situation that no species can occur in the studied sample). Moreover, it is not directly related to the sampling area size. In this sense, the original Fisher's alpha (correspondingly, species richness) is incomparable among ecological communities with varying area sizes. To overcome these limitations, we developed a novel area‐based logseries model that can account for the compounding effect of the sampling area. The new model can be used to conduct area‐based rarefaction and extrapolation of species richness, with the advantage of accurately predicting species richness in a large region that has an area size being hundreds or thousands of times larger than that of a locally observed sample, provided that data follow the proposed model. The power of our proposed model has been validated by extensive numerical simulations and empirically tested through tree species richness extrapolation and interpolation in Brazilian Atlantic forests. Our parametric model is data parsimonious as it is still applicable when only the information on species number, community size, or the numbers of singleton and doubleton species in the local sample is available. Notably, in comparison with the original Fisher's method, our area‐based model can provide asymptotically unbiased variance estimation (therefore correct 95% confidence interval) for species richness. In conclusion, the proposed area‐based Fisher's logseries model can be of broad applications with clear and proper statistical background. Particularly, it is very suitable for being applied to hyperdiverse ecological assemblages in which nonparametric richness estimators were found to greatly underestimate species richness.
机译:Fisher的对数序列被广泛地用来描述物种的丰富度模式,并且先前的一些研究使用它来预测物种的丰富度。但是,这个从负二项式模型得出的模型在零丰度点处退化(即其概率质量完全集中在零丰度处,导致一种奇怪的情况,即所研究的样本中没有物种可以出现)。而且,它与采样区域的大小没有直接关系。从这个意义上说,原始费舍尔的阿尔法(相应地,物种丰富度)在具有不同面积的生态群落中是无法比拟的。为了克服这些限制,我们开发了一种新颖的基于面积的对数序列模型,该模型可以说明采样区域的复合效应。新模型可用于对物种丰富度进行基于区域的稀疏和外推,其优势在于可以准确预测面积比本地观测样本大数百倍或数千倍的大区域内的物种丰富度,前提是数据遵循建议的模型。我们提出的模型的功能已通过广泛的数值模拟得到了验证,并通过在巴西大西洋森林中进行的树种丰富度外推和内插进行了经验测试。我们的参数模型是数据简化的,因为当仅提供有关物种数量,群落大小或本地样本中单子和双子物种数量的信息时,该模型仍然适用。值得注意的是,与原始的Fisher方法相比,我们基于面积的模型可以为物种丰富度提供渐近无偏方差估计(因此正确的95%置信区间)。总之,所提出的基于区域的Fisher对数序列模型可以在具有清晰而适当的统计背景的情况下得到广泛应用。特别是,它非常适用于发现非参数丰富度估计值大大低估物种丰富度的超多样性生态系统。

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