Efficient Predictor Ranking and False Discovery Proportion Control in High-Dimensional Regression
Abstract
We propose a ranking and selection procedure to prioritize relevant predictors and control false discovery proportion (FDP) of variable selection. Our procedure utilizes a new ranking method built upon the de-sparsified Lasso estimator. We show that the new ranking method achieves the optimal order of minimum non-zero effects in ranking relevant predictors ahead of irrelevant ones. Adopting the new ranking method, we develop a variable selection procedure to asymptotically control FDP at a user-specified level. We show that our procedure can consistently estimate the FDP of variable selection as long as the de-sparsified Lasso estimator is asymptotically normal. In numerical analyses, our procedure compares favorably to existing methods in ranking efficiency and FDP control when the regression model is relatively sparse.
Cite
@article{arxiv.1804.03274,
title = {Efficient Predictor Ranking and False Discovery Proportion Control in High-Dimensional Regression},
author = {X. Jessie Jeng and Xiongzhi Chen},
journal= {arXiv preprint arXiv:1804.03274},
year = {2018}
}
Comments
16 pages; 3 rigures; this version accepted by Journal of Multivariate Analysis