SUFFICIENT DIMENSION REDUCTION BASED ON AN ENSEMBLE OF MINIMUM AVERAGE VARIANCE ESTIMATORS

Citation
Xiangrong Yin et Bing Li, SUFFICIENT DIMENSION REDUCTION BASED ON AN ENSEMBLE OF MINIMUM AVERAGE VARIANCE ESTIMATORS, Annals of statistics , 39(6), 2011, pp. 3392-3416
Journal title
ISSN journal
00905364
Volume
39
Issue
6
Year of publication
2011
Pages
3392 - 3416
Database
ACNP
SICI code
Abstract
We introduce a class of dimension reduction estimators based on an ensemble of the minimum average variance estimates of functions that characterize the central subspace, such as the characteristic functions, the Box-Cox transformations and wavelet basis. The ensemble estimators exhaustively estimate the central subspace without imposing restrictive conditions on the predictors, and have the same convergence rate as the minimum average variance estimates. They are flexible and easy to implement, and allow repeated use of the available sample, which enhances accuracy. They are applicable to both univariate and multivariate responses in a unified form. We establish the consistency and convergence rate of these estimators, and the consistency of a cross validation criterion for order determination. We compare the ensemble estimators with other estimators in a wide variety of models, and establish their competent performance.