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Inconsistencies between theory and methodology: a recurrent problem in ordination studies.

机译:理论与方法之间的矛盾:协调研究中的一个经常性问题。

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Context: A historical review of ordination studies is presented with particular reference to the pioneering contributions of the late Prof. I. Noy-Meir and their continuing relevance. Issues: (1) Comparisons of ordination methods are often confounded by differences in the methodological algorithm, dissimilarity measure used and the data standardization employed. (2) Artificial data where 'truth' is known offer a means of evaluating ordination approaches but are highly sensitive to the ecological model assumed. (3) Data standardization is frequently used but its influence on ordination is poorly understood and lacks theoretical justification. Review: Historically, the above issues have been continually raised since the first use of artificial data by Swan in 1970 to demonstrate the 'horseshoe distortion'. Three distinct conceptual models have been used to generate artificial data, yet no consensus on their suitability has emerged since they were first used in the mid-1970s. Comparative studies had, by the late 1980s, shown that some approaches recovered 'ecological truth' better than others. Differences between comparative studies in conceptual models, nature of the data matrices used, different dissimilarity measures, ordination algorithms and evaluations methods limited acceptance of this conclusion. Data standardization alters the properties of the vegetation data matrix. Yet little is known regarding the influence on ordination results of the collective vegetation properties stand abundance, dominance or species richness, which are altered by standardization. Recent developments: Knowledge of the properties of individual dissimilarity measures and ordination algorithms has increased; a few new methods have emerged. Pragmatism of the type 'this method gives me useful answers so I do not need to use a better method' is common. Tests of conceptual models are now occurring based on species distribution modelling. Conclusions: A consensus is emerging that non-metric multidimensional scaling and dissimilarity measures such as the Bray-Curtis coefficient should be used in preference to correspondence analysis methods based on the chi 2 dissimilarity measure. Absence of a comprehensive model of vegetation composition is limiting ordination as a method of community analysis. Inconsistencies between different ordination methods and ecological models first recognized in the 1970s remain today.Digital Object Identifier http://dx.doi.org/10.1111/j.1654-1103.2012.01467.x
机译:背景:对配位研究进行了历史回顾,特别提到了已故的I. Noy-Meir教授的开创性贡献及其持续的相关性。问题:(1)排序方法的比较经常因方法算法,所使用的相异性度量和所使用的数据标准化方面的差异而混淆。 (2)已知“真相”的人工数据提供了一种评估协调方法的方法,但对假设的生态模型高度敏感。 (3)经常使用数据标准化,但是对标准化的影响了解甚少,并且缺乏理论依据。回顾:从历史上看,自1970年Swan首次使用人工数据来证明“马蹄形失真”以来,上述问题一直在不断提出。已经使用了三种不同的概念模型来生成人工数据,但是自从它们在1970年代中期首次使用以来,尚未就其适用性达成共识。到1980年代后期,比较研究表明,某些方法比其他方法更好地恢复了“生态真相”。概念模型中比较研究之间的差异,使用的数据矩阵的性质,不同的差异度量,排序算法和评估方法之间的差异限制了此结论的接受。数据标准化改变了植被数据矩阵的属性。关于集体植被的丰富度,优势度或物种丰富度对植被整理结果的影响知之甚少,这些都可以通过标准化来改变。最新动态:对个体差异度量和排序算法的属性的了解有所增加;出现了一些新方法。常见的做法是“此方法为我提供了有用的答案,因此我不需要使用更好的方法”。现在正在基于物种分布建模对概念模型进行测试。结论:越来越多的共识认为,应优先使用非度量多维标度和非相似性度量(例如Bray-Curtis系数),而不是基于chi 2 相似性度量的对应分析方法。缺乏植被组成的综合模型限制了作为群落分析方法的排序。如今仍然存在着不同的排序方法与1970年代首次认识到的生态模型之间的矛盾之处。数字对象标识符http://dx.doi.org/10.1111/j.1654-1103.2012.01467.x

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