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A new approach to functional interpretation of vegetation data

机译:植被数据功能解释的新方法

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摘要

In this paper we present a new approach to the simultaneous analysis of a species composition data set, an environmental gradient data set and a functional attribute data set. We demonstrate its advantages in terms of statistical modelling including model development and assessment as well as subsequent prediction. Our method is applied to a set of case data deriving from experimental wetland microcosms including 20 species, 12 treatment combinations and a classification of species into functional groups. Acknowledging that lack of independence between samples and over-interpretation of data may lead to overly optimistic assessment of model performance. we use cross-validation with different subsets of data to obtain realistic model performance measures. It is shown that although the outcome of the wetland experiment is predictable in terms of experimental treatments and taxonomic species. the functional groups cannot be used to explain the variation in species frequencies in the experiment. We compare the method with recently published approaches to the functional analysis of vegetation data, and discuss its applied perspectives.
机译:在本文中,我们提出了一种同时分析物种组成数据集,环境梯度数据集和功能属性数据集的新方法。我们在统计建模方面展示其优势,包括模型开发和评估以及后续预测。我们的方法适用于一组来自实验湿地微观世界的病例数据,包括20种,12种处理组合以及按功能组分类。承认样本之间缺乏独立性以及对数据的过度解释可能会导致对模型性能的评估过于乐观。我们对不同的数据子集使用交叉验证,以获得现实的模型性能指标。结果表明,尽管湿地实验的结果在实验处理和分类学物种方面是可预测的。官能团不能用来解释实验中物种频率的变化。我们将该方法与最近发表的植被数据功能分析方法进行了比较,并讨论了其应用前景。

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