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A neutral sampling formula for multiple samples and an 'exact' test of neutrality

机译:多个样本的中性采样公式和中性的“精确”检验

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As the utility of the neutral theory of biodiversity is increasingly being recognized, there is also an increasing need for proper tools to evaluate the relative importance of neutral processes (dispersal limitation and stochasticity). One of the key features of neutral theory is its close link to data: sampling formulas, giving the probability of a data set conditional on a set of model parameters, have been developed for parameter estimation and model comparison. However, only single local samples can be handled with the currently available sampling formulas, whereas data are often available for many small spatially separated plots. Here, I present a sampling formula for multiple, spatially separated samples from the same metacommunity, which is a generalization of earlier sampling formulas. I also provide an algorithm to generate data sets with the model and I introduce a general test of neutrality that does not require an alternative model; this test compares the probability of the observed data (calculated using the new sampling formula) with the probability of model-generated data sets. I illustrate this with tree abundance data from three large Panamanian neotropical forest plots. When the test is performed with model parameters estimated from the three plots, the model cannot be rejected; however, when parameter estimates previously reported for BCI are used, the model is strongly rejected. This suggests that neutrality cannot explain the structure of the three Panamanian tree communities on the local (BCI) and regional (Panama Canal Zone) scale simultaneously. One should be aware, however, that aspects of the model other than neutrality may be responsible for its failure. I argue that the spatially implicit character of the model is a potential candidate.
机译:随着越来越多地认识到生物多样性的中性理论的实用性,对评估中性过程(分散性限制和随机性)的相对重要性的适当工具的需求也日益增加。中性理论的关键特征之一是它与数据的紧密联系:为提供参数估计和模型比较,已经开发了采样公式,该公式给出了以一组模型参数为条件的数据集的概率。但是,只能使用当前可用的采样公式来处理单个局部样本,而对于许多在空间上分开的小图而言,数据通常是可用的。在这里,我为来自同一元社区的多个在空间上分离的样本提供了一个采样公式,这是对早期采样公式的概括。我还提供了一种使用该模型生成数据集的算法,并且介绍了不需要其他模型的中立性常规测试;该测试将观察到的数据(使用新的采样公式计算出的数据)的概率与模型生成的数据集的概率进行了比较。我用来自三个巴拿马新热带森林样地的树木丰度数据说明了这一点。当使用从三个图中估算出的模型参数进行测试时,不能拒绝模型。但是,当使用先前为BCI报告的参数估计值时,该模型将被强烈拒绝。这表明中立性无法同时解释本地(BCI)和区域(巴拿马运河区)规模上三个巴拿马树群落的结构。但是,应该意识到,模型的除中立之外的其他方面可能是其失败的原因。我认为模型的空间隐含特征是一个潜在的候选者。

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