Publication | Open Access
Multivariate Nonparametric Tests
147
Citations
23
References
2004
Year
Quantitative Spatial ModelHigh-dimensional MethodSpatial Statistical AnalysisSeveral-sample Location ProblemSpatial Rank VectorsMultidimensional AnalysisBiostatisticsStatistical InferenceOne-sample Location ProblemPublic HealthMultivariate AnalysisStatisticsSpatial StatisticsMultivariate Nonparametric TestsSemi-nonparametric Estimation
Multivariate nonparametric statistical tests of hypotheses are described for the one-sample location problem, the several-sample location problem and the problem of testing independence between pairs of vectors. These methods are based on affine-invariant spatial sign and spatial rank vectors. They provide affine-invariant multivariate generalizations of the univariate sign test, signed-rank test, Wilcoxon rank sum test, Kruskal–Wallis test, and the Kendall and Spearman correlation tests. While the emphasis is on tests of hypotheses, certain references to associated affine-equivariant estimators are included. Pitman asymptotic efficiencies demonstrate the excellent performance of these methods, particularly in heavy-tailed population settings. Moreover, these methods are easy to compute for data in common dimensions.
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