Skip to Main Content
936
Views
13
CrossRef citations to date
Altmetric
Pages 426-436
Received 01 Dec 2015
Accepted author version posted online: 20 Dec 2016
Published online: 10 May 2017
 
Translator disclaimer

ABSTRACT

Partial least squares (PLS) is a prominent solution for dimension reduction and high-dimensional regressions. Recent prevalence of multidimensional tensor data has led to several tensor versions of the PLS algorithms. However, none offers a population model and interpretation, and statistical properties of the associated parameters remain intractable. In this article, we first propose a new tensor partial least-squares algorithm, then establish the corresponding population interpretation. This population investigation allows us to gain new insight on how the PLS achieves effective dimension reduction, to build connection with the notion of sufficient dimension reduction, and to obtain the asymptotic consistency of the PLS estimator. We compare our method, both analytically and numerically, with some alternative solutions. We also illustrate the efficacy of the new method on simulations and two neuroimaging data analyses. Supplementary materials for this article are available online.

Acknowledgments

The authors thank the Editor, the Associate Editor, and two referees for their constructive comments. Zhang’s research was supported in part by NSF grants DMS-1613154 and CCF-1617691. Li’s research was supported in part by NSF grants DMS-1310319 and DMS-1613137.

Login options

Purchase * Save for later
Online

Article Purchase 24 hours to view or download: USD 51.00 Add to cart

Issue Purchase 30 days to view or download: USD 105.00 Add to cart

* Local tax will be added as applicable