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首页> 外文期刊>Journal of Vegetation Science >Heterogeneity-constrained random resampling of phytosociological databases
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Heterogeneity-constrained random resampling of phytosociological databases

机译:异质性约束的植物社会学数据库的随机重采样

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Aim: Phytosociological databases often contain unbalanced samples of real vegetation, which should be carefully resampled before any analyses. We propose a new resampling method based on species composition, called heterogeneity-constrained random (HCR) resampling.Method: Many subsets of the source vegetation database are selected randomly. These subsets are sorted by decreasing mean dissimilarity between pairs of the vegetation plots, and then sorted again by increasing variance of these dissimilarities. Ranks from both sortings are summed for each subset, and the subset with the lowest summed rank is considered as the most representative. The performance of this method was tested using simulated point patterns that represented different levels of aggregation of vegetation plots within a database. The distributions of points in the subsets resulting from different resampling methods, both with and without database stratification, were compared using Ripley's K function. The mean of random selections from an unbiased sample was used as a reference in these comparisons. The efficiency of the method was also demonstrated with real phytosociological data.Results: Both stratified and HCR resampling yielded selection patterns more similar to the reference than resampling without these tools. Outcomes from the resampling that combined these two methods were the most similar to the reference. The efficiency of the HCR resampling method varied with different levels of aggregation in the database.Conclusions: This new method is efficient for resampling phytosociological databases. As it only uses information on species occurrences/abundances, it does not require the definition of strata, thereby avoiding the effect of subjective decisions on the selection outcome. Nevertheless, this method can also be applied to stratified databases.
机译:目的:植物社会学数据库通常包含不平衡的真实植被样本,在进行任何分析之前应仔细重新取样。我们提出了一种新的基于物种组成的重采样方法,称为异质性约束随机(HCR)重采样方法。方法:随机选择源植被数据库的许多子集。这些子集通过减少成对的植被图之间的平均相异性进行排序,然后通过增加这些相异性的方差再次进行排序。对于每个子集,将两种排序的等级相加,并且总和等级最低的子集被认为是最具代表性的。使用模拟点模式测试了该方法的性能,模拟点模式表示数据库中植被图的不同聚合级别。使用Ripley的K函数比较了使用和不使用数据库分层的不同重采样方法导致的子集中点的分布。在这些比较中,从无偏样本中随机选择的平均值作为参考。结果:真实的植物社会学数据也证明了该方法的有效性。结果:分层和HCR重采样所产生的选择模式与不使用这些工具进行重采样相比,与参考更相似。将这两种方法结合在一起的重采样结果与参考文献最为相似。 HCR重采样方法的效率随数据库中不同级别的聚合而变化。结论:此新方法可有效重采样植物社会学数据库。由于它仅使用有关物种发生/丰度的信息,因此不需要定义层次,从而避免了主观决定对选择结果的影响。但是,该方法也可以应用于分层数据库。

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