Dimension Reduction Based on Constrained Canonical Correlation and Variable Filtering

Citation
Zhou, Jianhui et He, Xuming, Dimension Reduction Based on Constrained Canonical Correlation and Variable Filtering, Annals of statistics , 36(4), 2020, pp. 1649-1668
Journal title
ISSN journal
00905364
Volume
36
Issue
4
Year of publication
2020
Pages
1649 - 1668
Database
ACNP
SICI code
Abstract
The "curse of dimensionality" has remained a challenge for high-dimensional data analysis in statistics. The sliced inverse regression (SIR) and canonical correlation (CANCOR) methods aim to reduce the dimensionality of data by replacing the explanatory variables with a small number of composite directions without losing much information. However, the estimated composite directions generally involve all of the variables, making their interpretation difficult. To simplify the direction estimates, Ni, Cook and Tsai [Biometrika 92 (2005) 242-247] proposed the shrinkage sliced inverse regression (SSIR) based on SIR. In this paper, we propose the constrained canonical correlation (C³) method based on CANCOR, followed by a simple variable filtering method. As a result, each composite direction consists of a subset of the variables for interpretability as well as predictive power. The proposed method aims to identify simple structures without sacrificing the desirable properties of the unconstrained CANCOR estimates. The simulation studies demonstrate the performance advantage of the proposed C³ method over the SSIR method. We also use the proposed method in two examples for illustration.