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首页> 外文期刊>Community Ecology >The classification conundrum: species fidelity as leading criterion in search of a rigorous method to classify a complex forest data set
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The classification conundrum: species fidelity as leading criterion in search of a rigorous method to classify a complex forest data set

机译:分类难题:以物种保真度为主导标准,寻求严密方法对复杂森林数据集进行分类

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We present a test involving a large number of data-analytical techniques to identify a rigorous numerical classification method optimising on statistically identified faithful species. The test follows a stepwise filtering process involving various numerical-classification tools. Five steps were involved in the testing: (1) evaluation of 322 classification tools using Optim-Class 1; (2) comparison of 20 best performing methods by standardising the various performances across a range of fidelity values using OptimClass 1 and OptimClass 2, to assess the effectiveness of the agglomerative clustering and one divisive technique; (3) calculation and comparison of Uniqueness values and ISAMIC (Indicator Species Analysis Minimising Intermediate Constancies)scores of the resulting classifications; (4) comparison of different classifications by analysing the similarities of the resulting synoptic tables using faithful species, assuming that clusters with similar faithful species represent corresponding vegetation types, and (5) final selection of the single best method based on an expert review of non-geometric internal evaluators, NMDS ordinations and mapped classification solutions. A complex data set, representing many forest vegetation types and consisting of 506 releves of 20 m x 20 m sampled in the indigenous forests of Mpumalanga Province (South Africa), was tested. Analysis of Uniqueness provided insight into which methods produced classifications that did not share faithful species. The analysisof synoptic table similarity showed that the classification results were at most 88% similar, while in the most divergent case similarity of only 50% was achieved. OptimClass eliminated poorly performing numerical-classification combinations and highlighted the best performing methods. Yet it was unable to reveal the single best performing method unequivocally across the range of fidelity values used. In such cases, we suggest the solution can be sought in relying on involving external data through expert opinion. Ordinal Clustering and TWINSPAN produced the most outlying classification results. Flexible beta clustering (P = -0.25) in combination with Bray-Curtis coefficient, standardised by sample unit totals, produced the most informative result forour data set when using informal expert-defined ecological and biogeographical judgement criteria. We recommend that the performance of a set of methods be tested prior to selecting the final classification approach.
机译:我们提出了一项涉及大量数据分析技术的测试,目的是确定对经统计学鉴定的忠实物种进行优化的严格数字分类方法。该测试遵循逐步筛选过程,涉及各种数字分类工具。测试涉及五个步骤:(1)使用Optim-Class 1评估322个分类工具; (2)比较20种最佳执行方法,方法是使用OptimClass 1和OptimClass 2在一定保真度值范围内对各种性能进行标准化,以评估聚集聚类和一种划分技术的有效性; (3)计算和比较所得分类的唯一性值和ISAMIC(使中间一致性最小的指标物种分析)得分; (4)假设具有相似忠实物种的聚类代表相应的植被类型,并使用忠实物种通过分析所得天气表的相似性来比较不同类别,以及(5)基于非植物学专家审查的最佳方法的最终选择-几何内部评估器,NMDS排序和映射的分类解决方案。测试了一个复杂的数据集,该数据集代表了许多森林植被类型,并由姆普马兰加省(南非)的原生林中采样的506个20 m x 20 m的植被组成。唯一性分析提供了对哪些方法产生不共享真实物种的分类的见解。对天气表相似度的分析表明,分类结果的相似度最高为88%,而在最分歧的情况下,相似度仅为50%。 OptimClass消除了效果不佳的数字分类组合,并强调了效果最好的方法。但是,它无法在所使用的保真度值范围内明确地揭示最佳性能的单一方法。在这种情况下,我们建议可以通过专家意见依靠外部数据来寻求解决方案。序数聚类和TWINSPAN产生了最偏远的分类结果。当使用非正式的专家定义的生态和生物地理判断标准时,灵活的beta聚类(P = -0.25)与Bray-Curtis系数结合(通过样品单位总计进行标准化),可以为我们的数据集提供最有益的结果。我们建议在选择最终分类方法之前先测试一组方法的性能。

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