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.
Full-text: Access denied (no subscription detected)
We're sorry, but we are unable to provide you with the full text of this article because we are not able to identify you as a subscriber.
If you have a personal subscription to this journal, then please login. If you are already logged in, then you may need to update your profile to register your subscription.
Read more about accessing full-text
Alternatively, the document is available for a cost of $15. Select the "buy article" button below to purchase this document from a secured VeriSign, Inc. site.
References
[1] Chen, C.-H. and Li, K.-C. (1998). Can SIR be as popular as multiple linear regression? Statist. Sinica 8 289–316.
[2] Cook, R. D. (1994). Using dimension-reduction subspaces to identify important inputs in models of physical systems. In 1994 Proceedings of the Section on Physical Engineering Sciences 18–25. Amer. Statist. Assoc., Alexandria, VA.
[3] Cook, R. D. (2004). Testing predictor contributions in sufficient dimension reduction. Ann. Statist. 32 1062–1092.
[4] Cook, R. D. and Critchely, F. (2000). Identifying outliers and regression mixtures graphically. J. Amer. Statist. Assoc. 95 781–794.
[5] Cook, R. D. and Weisberg, S. (1991). Discussion of “Sliced inverse regression for dimension reduction” by K. C. Li. J. Amer. Statist. Assoc. 86 328–332.
[6] Fan, J. and Li, R. (2001). Variable selection via nonconcave penalized likelihood and its oracle properties. J. Amer. Statist. Assoc. 96 1348–1360.
[7] Fan, J. and Peng, H. (2004). Nonconcave penalized likelihood with a diverging number of parameters. Ann. Statist. 32 928–961.
[8] Fung, W. K., He, X., Liu, L. and Shi, P. (2002). Dimension reduction based on canonical correlation. Statist. Sinica 12 1093–1113.
[9] Li, B., Zha, H. and Chiaromonte, F. (2005). Contour regression: A general approach to dimension reduction. Ann. Statist. 33 1580–1616.
[10] Li, L. (2007). Sparse sufficient dimension reduction. Biometrika 94 603–613.
[11] Li, K.-C. (1991). Sliced inverse regression for dimension reduction (with discussion). J. Amer. Statist. Assoc. 86 316–327.
[12] Li, K.-C. (1992). On principal Hessian directions for data visualization and dimension reduction: Another application of Stein’s lemma. J. Amer. Statist. Assoc. 87 1025–1039.
[13] Li, K.-C. (2000) High dimensional data analysis via the SIR/PHD approach. Available at http://www.stat.ucla.edu/~kcli/sir-PHD.pdf.
[14] Li, K.-C. and Duan, N. (1989). Regression analysis under link violation. Ann. Statist. 17 1009–1052.
[15] Muirhead, R. J. and Waternaux, C. M. (1980). Asymptotic distributions in canonical correlation analysis and other multivariate procedures for nonnormal populations. Biometrika 67 31–43.
Mathematical Reviews (MathSciNet):
MR570502
[16] Naik, P. A. and Tsai, C.-L. (2001). Single-index model selections. Biometrika 88 821–832.
[17] Ni, L., Cook, R. D. and Tsai, C.-L. (2005). A note on shrinkage sliced inverse regression. Biometrika 92 242–247.
[18] Shi, P. and Tsai, C.-L. (2002). Regression model selection—a residual likelihood approach. J. Roy. Statist. Soc. Ser. B 64 237–252.
[19] Tibshirani, R. (1996). Regression shrinkage and selection via the lasso. J. Roy. Statist. Soc. Ser. B 58 267–288.
[20] Xia, Y., Tong, H., Li, W. K. and Zhu, L.-X. (2002). An adaptive estimation of dimension reduction space. J. Roy. Statist. Soc. Ser. B 64 363–410.
[21] Zhou, J. (2008). Robust dimension reduction based on canonical correlation. Preprint.