TY - JOUR
T1 - The broken adaptive ridge estimation for the high-dimensional covariate-adjusted regression model
AU - Huang, Jinzhi
AU - Li, Bingzhao
N1 - Publisher Copyright:
© The Author(s), under exclusive license to Korean Statistical Society 2026.
PY - 2026
Y1 - 2026
N2 - We consider the covariate-adjusted regression (CAR) model in which both predictors and response are not observable but distorted by a common confounding variable in multiplication way. In this paper, we employ the broken adaptive ridge (BAR) method to simultaneously select variables and estimate the coefficients for high-dimensional CAR model and obtain a CAR-BAR (CBAR) estimator after the predictors and response adjusted. We establish that CBAR estimator is consistent for variable selection and oracle for parameter estimation and possesses a grouping property for highly correlated covariates. Further, a consistent estimator of the error variance is given. Extensive simulations indicate that our CBAR method is superior to LASSO, Adaptive LASSO, SCAD and MCP methods. Particularly, a simulation scenario involving collinear predictors also demonstrates that CBAR outperforms other methods. Moreover, we show that the CBAR enjoys fast convergence rate by a straightforward simulation. In the analysis of Boston Housing data, we construct a statistic to test whether the selected variables have significant effect on the response, and give different and interesting explanations for the fitted model.
AB - We consider the covariate-adjusted regression (CAR) model in which both predictors and response are not observable but distorted by a common confounding variable in multiplication way. In this paper, we employ the broken adaptive ridge (BAR) method to simultaneously select variables and estimate the coefficients for high-dimensional CAR model and obtain a CAR-BAR (CBAR) estimator after the predictors and response adjusted. We establish that CBAR estimator is consistent for variable selection and oracle for parameter estimation and possesses a grouping property for highly correlated covariates. Further, a consistent estimator of the error variance is given. Extensive simulations indicate that our CBAR method is superior to LASSO, Adaptive LASSO, SCAD and MCP methods. Particularly, a simulation scenario involving collinear predictors also demonstrates that CBAR outperforms other methods. Moreover, we show that the CBAR enjoys fast convergence rate by a straightforward simulation. In the analysis of Boston Housing data, we construct a statistic to test whether the selected variables have significant effect on the response, and give different and interesting explanations for the fitted model.
KW - Covariate-adjusted regression model
KW - Grouping effect
KW - Oracle estimator
KW - Parameter estimation
KW - Variable selection
UR - https://www.scopus.com/pages/publications/105037414714
U2 - 10.1007/s42952-026-00372-4
DO - 10.1007/s42952-026-00372-4
M3 - Article
AN - SCOPUS:105037414714
SN - 1226-3192
JO - Journal of the Korean Statistical Society
JF - Journal of the Korean Statistical Society
ER -