Symmetry (Jun 2022)

Generalized Nonparametric Composite Tests for High-Dimensional Data

  • Xiaoli Kong,
  • Alejandro Villasante-Tezanos,
  • Solomon W. Harrar

DOI
https://doi.org/10.3390/sym14061153
Journal volume & issue
Vol. 14, no. 6
p. 1153

Abstract

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In this paper, composite high-dimensional nonparametric tests for two samples are proposed, by using component-wise Wilcoxon–Mann–Whitney-type statistics. No distributional assumption, moment condition, or parametric model is required for the development of the tests and the theoretical results. Two approaches are employed, for estimating the asymptotic variance of the composite statistic, leading to two tests. In both cases, banding of the covariance matrix to estimate variance of the test statistic is involved. An adaptive algorithm, for selecting the banding window width, is proposed. Numerical studies are provided, to show the favorable performance of the new tests in finite samples and under varying degrees of dependence.

Keywords