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The Canonical Analysis of Distance

机译:距离的典范分析

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1.txt Canonical Variate Analysis (CVA) is one of the most useful of multivariate methods. It is concerned with separating between and within group variation among N samples from K populations with respect to p measured variables. Mahalanobis distance between the K group means can be represented as points in a(K - 1) dimensional space and approximated in a smaller space, with the variables shown as calibrated biplot axes. Within group variation may also be shown, together with circular confidence regions and other convex prediction regions, which may be used to discriminate new samples. This type of representation extends to what we term Analysis of Distance(AoD), whenever a Euclidean inter-sample distance is defined. Although the N × N distance matrix of the samples, which may be large, is required, eigenvalue calculations are needed only for the much smaller K × K matrix of distances between group centroids. All the ancillary information that is attached to a CVA analysis is available in an AoD analysis. We outline the theory and the R programs we developed to implement AoD by presenting two examples.
机译:1.txt标准变量分析(CVA)是最有用的多元方法之一。它涉及到关于p个测量变量,从K个种群的N个样本中,在组间变异之间和组内变异。 K组均值之间的Mahalanobis距离可以表示为(K-1)维空间中的点,并且可以在较小的空间中近似,其中变量显示为校准的双线图轴。还可以显示组内变化以及圆形置信度区域和其他凸预测区域,这些区域可以用来区分新样本。每当定义了欧几里得样本间距离时,这种表示形式就会扩展到我们所谓的距离分析(AoD)。尽管需要样本的N×N距离矩阵(可能很大),但仅对于组质心之间的距离的K×K矩阵小得多,才需要特征值计算。 AoD分析中提供了附加到CVA分析的所有辅助信息。通过展示两个示例,我们概述了为实现AoD而开发的理论和R程序。

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