JOURNAL ARTICLE

Robust nonparametric hypothesis tests for differences in the covariance structure of functional data.

  • Published In: Canadian Journal of Statistics, 2024, v. 52, n. 1. P. 43 1 of 3

  • Database: Academic Search Ultimate 2 of 3

  • Authored By: Ramsay, Kelly; Chenouri, Shoja'eddin 3 of 3

Abstract

We develop a group of robust, nonparametric hypothesis tests that detect differences between the covariance operators of several populations of functional data. These tests, called functional Kruskal–Wallis tests for covariance, or FKWC tests, are based on functional data depth ranks. FKWC tests work well even when the data are heavy‐tailed, which is shown both in simulation and theory. FKWC tests offer several other benefits: they have a simple asymptotic distribution under the null hypothesis, they are computationally cheap, and they possess transformation‐invariance properties. We show that under general alternative hypotheses, these tests are consistent under mild, nonparametric assumptions. As a result, we introduce a new functional depth function called L2‐root depth that works well for the purposes of detecting differences in magnitude between covariance kernels. We present an analysis of the FKWC test based on L2‐root depth under local alternatives. Through simulations, when the true covariance kernels have an infinite number of positive eigenvalues, we show that these tests have higher power than their competitors while maintaining their nominal size. We also provide a method for computing sample size and performing multiple comparisons. [ABSTRACT FROM AUTHOR]

Additional Information

  • Source:Canadian Journal of Statistics. 2024/03, Vol. 52, Issue 1, p43
  • Document Type:Article
  • Subject Area:Business and Management
  • Publication Date:2024
  • ISSN:0319-5724
  • DOI:10.1002/cjs.11767
  • Accession Number:176037695
  • Copyright Statement:Copyright of Canadian Journal of Statistics is the property of Wiley-Blackwell and its content may not be copied or emailed to multiple sites without the copyright holder's express written permission. Additionally, content may not be used with any artificial intelligence tools or machine learning technologies. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)

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