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Choosing the best similarity index when performing fuzzy set ordination on binary data

机译:对二进制数据执行模糊集排序时选择最佳相似性索引

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Fuzzy set ordination (FSO) may be used with either abundance data or binary (presence/absence) data. FSO requires a similarity index that returns values between 0 and 1. Many indices will do so, but their suitability for FSO has not been tested. Nine binary indices were evaluated in this study. Simulated plant community data sets were generated with COMPAS: they contained five levels of beta -diversity, two levels of qualitative noise, and two sampling arrangements (regular or random) along one gradient. Indices were evaluated with rank and linear correlations between the apparent ecological gradient positions generated by FSO and actual gradient positions: the abilities of the best-performing indices to minimize the curlover effect were also compared. All indices performed best at intermediate levels of beta -diversity and with regular sampling. Five indices had consistently higher rank and linear correlations (Baroni-Urbani & Buser. Jaccard, Kulczynski. Ochiai and Sorensen), whereas four were consistently lower (Faith. Russell & Rao, Rogers & Tanimoto and Simple Matching). There were no significant differences in curlover among the five best indices. A step-across algorithm, a flexible shortest path adjustment, improved correlations and reduced curlover for the five best indices at higher beta -diversity levels. We recommend that one of the five best-performing similarity indices be used with FSO on binary data: a flexible shortest path adjustment should also be employed at higher, beta -diversities when possible.
机译:模糊集排序(FSO)可以与丰度数据或二进制(存在/不存在)数据一起使用。 FSO要求返回一个介于0到1之间的值的相似性索引。许多索引都会这样做,但是尚未测试它们是否适合FSO。在这项研究中评估了九个二元指数。用COMPAS生成了模拟的植物群落数据集:它们包含五个级别的β多样性,两个级别的定性噪声以及两个沿一个梯度的采样安排(常规或随机)。通过FSO产生的表观生态梯度位置与实际梯度位置之间的等级和线性相关性对指标进行了评估:还比较了最佳性能指标最大程度地减小了卷曲效应的能力。所有指数在中等水平的β多样性和定期抽样下表现最佳。五个指数始终具有较高的等级和线性相关性(Ba​​roni-Urbani&Buser。Jaccard,Kulczynski。Ochiai和Sorensen),而四个指数始终较低(Faith。Russell&Rao,Rogers&Tanimoto和Simple Matching)。五个最佳指数之间的卷曲度没有显着差异。跨步算法,灵活的最短路径调整,改进的相关性和降低的β多样性水平较高的五个最佳指标的卷曲度。我们建议对二进制数据使用FSO表现最佳的五个相似性指数之一:在可能的情况下,也应在较高的beta多样性下采用灵活的最短路径调整。

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