Robust inverse regression for dimension reduction

Yuexiao Dong, Zhou Yu, Liping Zhu

Research output: Contribution to journalArticlepeer-review

15 Scopus citations

Abstract

Classical sufficient dimension reduction methods are sensitive to outliers present in predictors, and may not perform well when the distribution of the predictors is heavy-tailed. In this paper, we propose two robust inverse regression methods which are insensitive to data contamination: weighted inverse regression estimation and sliced inverse median estimation. Both weighted inverse regression estimation and sliced inverse median estimation produce unbiased estimates of the central space when the predictors follow an elliptically contoured distribution. Our proposals are compared with existing robust dimension reduction procedures through comprehensive simulation studies and an application to the New Zealand mussel data. It is demonstrated that our methods have better overall performances than existing robust procedures in the presence of potential outliers and/or inliers.

Original languageEnglish
Pages (from-to)71-81
Number of pages11
JournalJournal of Multivariate Analysis
Volume134
DOIs
StatePublished - 1 Feb 2015

Keywords

  • Central space
  • Ellipticity
  • Multivariate median
  • Sliced inverse regression

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