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Choosing and using diversity indices: insights for ecological applications from the German Biodiversity Exploratories

机译:选择和使用多样性指数:德国生物多样性探索组织对生态应用的见解

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摘要

Biodiversity, a multidimensional property of natural systems, is difficult to quantify partly because of the multitude of indices proposed for this purpose. Indices aim to describe general properties of communities that allow us to compare different regions, taxa, and trophic levels. Therefore, they are of fundamental importance for environmental monitoring and conservation, although there is no consensus about which indices are more appropriate and informative. We tested several common diversity indices in a range of simple to complex statistical analyses in order to determine whether some were better suited for certain analyses than others. We used data collected around the focal plant Plantago lanceolata on 60 temperate grassland plots embedded in an agricultural landscape to explore relationships between the common diversity indices of species richness (S), Shannon’s diversity (H’), Simpson’s diversity (D1), Simpson’s dominance (D2), Simpson’s evenness (E), and Berger–Parker dominance (BP). We calculated each of these indices for herbaceous plants, arbuscular mycorrhizal fungi, aboveground arthropods, belowground insect larvae, and P. lanceolata molecular and chemical diversity. Including these trait-based measures of diversity allowed us to test whether or not they behaved similarly to the better studied species diversity. We used path analysis to determine whether compound indices detected more relationships between diversities of different organisms and traits than more basic indices. In the path models, more paths were significant when using H’, even though all models except that with E were equally reliable. This demonstrates that while common diversity indices may appear interchangeable in simple analyses, when considering complex interactions, the choice of index can profoundly alter the interpretation of results. Data mining in order to identify the index producing the most significant results should be avoided, but simultaneously considering analyses using multiple indices can provide greater insight into the interactions in a system.
机译:生物多样性是自然系统的多维特性,部分原因是为此提出了许多指标,因此难以量化。指标旨在描述社区的一般属性,这些属性使我们能够比较不同的地区,分类和营养级别。因此,它们对于环境监测和保护至关重要,尽管尚未就哪种指标更合适和提供更多信息达成共识。我们在一系列简单到复杂的统计分析中测试了几种常见的多样性指数,以确定是否某些指数比其他指数更适合某些分析。我们使用在农业景观中嵌入的60个温带草原样地上的重点植物车前草周围的数据,来探索物种丰富度(S),香农多样性(H'),辛普森多样性(D1),辛普森优势度的共同多样性指数之间的关系。 (D2),辛普森均匀度(E)和伯杰-帕克优势(BP)。我们计算了草本植物,丛枝菌根真菌,地上节肢动物,地下昆虫幼虫以及轮叶轮虫分子和化学多样性的每个指标。包括这些基于特征的多样性测度,我们可以测试它们的行为是否与经过更好研究的物种多样性相似。我们使用路径分析来确定复合指标是否比更多基本指标检测到更多不同生物体和性状之间的关系。在路径模型中,即使使用H'的所有模型同样可靠,但使用H'时仍有更多的路径有意义。这表明,尽管在简单的分析中常见的多样性指标看起来可以互换,但是当考虑复杂的相互作用时,指标的选择会深刻改变结果的解释。应该避免进行数据挖掘以识别产生最重要结果的索引,但是同时考虑使用多个索引进行分析可以提供对系统交互作用的更深入了解。

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