Generalized discriminant analysis based on distances
University of Auckland · The University of Sydney
Abstract
Summary This paper describes a method of generalized discriminant analysis based on a dissimilarity matrix to test for differences in a priori groups of multivariate observations. Use of classical multidimensional scaling produces a low‐dimensional representation of the data for which Euclidean distances approximate the original dissimilarities. The resulting scores are then analysed using discriminant analysis, giving tests based on the canonical correlations. The asymptotic distributions of these statistics under permutations of the observations are shown to be invariant to changes in the distributions of the original variables, unlike the distributions of the multi‐response permutation test statistics which…
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Authors
2Topics & keywords
- Mathematics
- Multidimensional scaling
- Statistics
- Multivariate statistics
- Linear discriminant analysis
- Discriminant
- Invariant (physics)
- Scaling
- Reduced inequalities