Canonical Correlation Analysis Through Linear Modeling
Summary
In this paper, we introduce linear modeling of canonical correlation analysis, which estimates canonical direction matrices by minimising a quadratic objective function. The linear modeling results in a class of estimators of canonical direction matrices, and an optimal class is derived in the sense described herein. The optimal class guarantees several of the following desirable advantages: first, its estimates of canonical direction matrices are asymptotically efficient; second, its test statistic for determining the number of canonical covariates always has a chi‐squared distribution asymptotically; third, it is straight forward to construct tests for variable selection. The standard canonical correlation analysis and other existing methods turn out to be suboptimal members of the class. Finally, we study the role of canonical variates as a means of dimension reduction for predictors and responses in multivariate regression. Numerical studies and data analysis are presented.
Citing Literature
Number of times cited according to CrossRef: 4
- Jae Keun Yoo, Unstructured principal fitted response reduction in multivariate regression, Journal of the Korean Statistical Society, 10.1016/j.jkss.2019.02.001, (2019).
- Xiaohui Lei, Bo Li, Jing Xie, undefined, 2017 12th IEEE Conference on Industrial Electronics and Applications (ICIEA), 10.1109/ICIEA.2017.8283143, (1870-1874), (2017).
- Jae Keun Yoo, A theoretical note on optimal sufficient dimension reduction with singularity, Statistics & Probability Letters, 10.1016/j.spl.2015.01.004, 99, (109-113), (2015).
- Yunju Im, HeyIn Gang, Jae Keun Yoo, High‐throughput data dimension reduction via seeded canonical correlation analysis, Journal of Chemometrics, 10.1002/cem.2691, 29, 3, (193-199), (2014).




