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Correlation analysis of dissimilarity matrices

机译:相似度矩阵的相关性分析

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Distance-based methods have been a valuable tool for ecologists for decades. Indirectly, distance-based ordination and cluster analysis, in particular, have been widely practiced as they allow the visualization of a multivariate data set in a few dimensions. The explicitly distance-based Mantel test and multiple regression on distance matrices (MRM) add hypothesis testing to the toolbox. One concern for ecologists wishing to use these methods lies in deciding whether to combine data vectors into a compound multivariate dissimilarity to analyze them individually. For Euclidean distances on scaled data, the correlation of a pair of multivariate distance matrices can be calculated from the correlations between the two sets of individual distance matrices if one set is orthogonal, demonstrating a clear link between individual and compound distances. The choice between Mantel and MRM should be driven by ecological hypotheses rather than mathematical concerns. The relationship between individual and compound distance matrices also provides a means for calculating the maximum possible value of the Mantel statistic, which can be considerably less than 1 for a given analysis. These relationships are demonstrated with simulated data. Although these mathematical relationships are only strictly true for Euclidean distances when one set of variables is orthogonal, simulations show that they are approximately true for weakly correlated variables and Bray-Curtis dissimilarities.
机译:数十年来,基于距离的方法一直是生态学家的宝贵工具。间接地,尤其是基于距离的排序和聚类分析已被广泛实践,因为它们允许在几个维度上可视化多元数据集。显式基于距离的Mantel检验和距离矩阵的多元回归(MRM)在工具箱中添加了假设检验。希望使用这些方法的生态学家关心的一个问题是,确定是否将数据向量组合为复合的多元差异以分别分析它们。对于缩放数据上的欧几里得距离,如果一组是正交的,则可以从两组单个距离矩阵之间的相关性计算一对多元距离矩阵的相关性,这表明单个距离与复合距离之间存在明确的联系。在Mantel和MRM之间进行选择应该由生态假设而非数学上的考虑驱动。各个距离矩阵与复合距离矩阵之间的关系还提供了一种计算Mantel统计量的最大可能值的方法,对于给定的分析,该值可能大大小于1。这些关系已通过模拟数据得到证明。尽管当一组变量正交时,这些数学关系仅对欧几里得距离严格成立,但仿真显示它们对于弱相关变量和Bray-Curtis不相似性近似成立。

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