Functional sufficient dimension reduction : Convergence rates and multiple functional case

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

7 Scopus Citations
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Author(s)

Detail(s)

Original languageEnglish
Pages (from-to)58-68
Journal / PublicationJournal of Statistical Planning and Inference
Volume167
Publication statusPublished - 1 Dec 2015
Externally publishedYes

Abstract

Although sufficient dimension reduction for functional data has received some attention in the literature, its theoretical properties are less understood. Besides, the current literature only focused on sliced inverse regression (SIR). In this paper we consider functional version of SIR and SAVE (sliced average variance estimation) via a Tikhonov regularization approach. Besides consistency, we show that their convergence rates are the same as the minimax rates for functional linear regression, which we think is an interesting theoretical result given that sufficient dimension reduction is much more flexible than functional linear regression. In sufficient dimension reduction, it is well known that estimation of multiple directions requires extraction of multiple eigenfunctions. We also consider multiple functional dimension reduction, in which one eigenfunction surprisingly recovers multiple index functions at once, despite its similarity with single functional case. The numerical properties are illustrated using several simulation examples as well as a Japanese weather dataset.

Research Area(s)

  • Convergence rates, Functional data, Regularization, Sliced average variance estimation, Sliced inverse regression