Valid Post-Selection Inference in High-Dimensional Approximately Sparse Quantile Regression Models

B-Tier
Journal: Journal of the American Statistical Association
Year: 2019
Volume: 114
Issue: 526
Pages: 749-758

Authors (3)

Alexandre Belloni (not in RePEc) Victor Chernozhukov (Massachusetts Institute of Tec...) Kengo Kato (not in RePEc)

Score contribution per author:

0.673 = (α=2.02 / 3 authors) × 1.0x B-tier

α: calibrated so average coauthorship-adjusted count equals average raw count

Abstract

This work proposes new inference methods for a regression coefficient of interest in a (heterogenous) quantile regression model. We consider a high-dimensional model where the number of regressors potentially exceeds the sample size but a subset of them suffices to construct a reasonable approximation to the conditional quantile function. The proposed methods are (explicitly or implicitly) based on orthogonal score functions that protect against moderate model selection mistakes, which are often inevitable in the approximately sparse model considered in the present article. We establish the uniform validity of the proposed confidence regions for the quantile regression coefficient. Importantly, these methods directly apply to more than one variable and a continuum of quantile indices. In addition, the performance of the proposed methods is illustrated through Monte Carlo experiments and an empirical example, dealing with risk factors in childhood malnutrition. Supplementary materials for this article are available online.

Technical Details

RePEc Handle
repec:taf:jnlasa:v:114:y:2019:i:526:p:749-758
Journal Field
Econometrics
Author Count
3
Added to Database
2026-01-25