Statistics and Its Interface

Volume 9 (2016)

Number 2

A note on moment-based sufficient dimension reduction estimators

Pages: 141 – 145

DOI: https://dx.doi.org/10.4310/SII.2016.v9.n2.a2

Author

Yuexiao Dong (Temple University, Philadelphia, Pennsylvania, U.S.A.)

Abstract

The two main groups of moment-based sufficient dimension reduction methods are the estimators for the central space and the estimators for the central mean space. The former group includes methods such as sliced inverse regression, sliced average variance estimation and sliced average third-moment estimation, while ordinary least squares and principal Hessian directions belong to the latter group. We provide unified frameworks for each group of estimators in this short note. The central space estimators can be unified as inverse conditional cumulants, while Stein’s Lemma is used to motivate the central mean space estimators.

Keywords

central mean space, central space, conditional cumulants, Stein’s Lemma

Published 4 November 2015