多元统计
非参数统计
统计
度量(数据仓库)
距离测量
数学
主成分分析
冗余(工程)
排列(音乐)
I类和II类错误
生态学
计算机科学
应用数学
算法
数据挖掘
人工智能
生物
物理
操作系统
声学
作者
Brian H. McArdle,Marti J. Anderson
出处
期刊:Ecology
[Wiley]
日期:2001-01-01
卷期号:82 (1): 290-297
被引量:3609
标识
DOI:10.1890/0012-9658(2001)082[0290:fmmtcd]2.0.co;2
摘要
Nonparametric multivariate analysis of ecological data using permutation tests has two main challenges: (1) to partition the variability in the data according to a complex design or model, as is often required in ecological experiments, and (2) to base the analysis on a multivariate distance measure (such as the semimetric Bray-Curtis measure) that is reasonable for ecological data sets. Previous nonparametric methods have succeeded in one or other of these areas, but not in both. A recent contribution to Ecological Monographs by Legendre and Anderson, called distance-based redundancy analysis (db-RDA), does achieve both. It does this by calculating principal coordinates and subsequently correcting for negative eigenvalues, if they are present, by adding a constant to squared distances. We show here that such a correction is not necessary. Partitioning can be achieved directly from the distance matrix itself, with no corrections and no eigenanalysis, even if the distance measure used is semimetric. An ecological example is given to show the differences in these statistical methods. Empirical simulations, based on parameters estimated from real ecological species abundance data, showed that db-RDA done on multifactorial designs (using the correction) does not have type 1 error consistent with the significance level chosen for the analysis (i.e., does not provide an exact test), whereas the direct method described and advocated here does.
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