Sparse quantile regression

A-Tier
Journal: Journal of Econometrics
Year: 2023
Volume: 235
Issue: 2
Pages: 2195-2217

Authors (2)

Score contribution per author:

2.011 = (α=2.01 / 2 authors) × 2.0x A-tier

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

Abstract

We consider both ℓ0-penalized and ℓ0-constrained quantile regression estimators. For the ℓ0-penalized estimator, we derive an exponential inequality on the tail probability of excess quantile prediction risk and apply it to obtain non-asymptotic upper bounds on the mean-square parameter and regression function estimation errors. We also derive analogous results for the ℓ0-constrained estimator. The resulting rates of convergence are nearly minimax-optimal and the same as those for ℓ1-penalized and non-convex penalized estimators. Further, we characterize expected Hamming loss for the ℓ0-penalized estimator. We implement the proposed procedure via mixed integer linear programming and also a more scalable first-order approximation algorithm. We illustrate the finite-sample performance of our approach in Monte Carlo experiments and its usefulness in a real data application concerning conformal prediction of infant birth weights (with n≈103 and up to p>103). In sum, our ℓ0-based method produces a much sparser estimator than the ℓ1-penalized and non-convex penalized approaches without compromising precision.

Technical Details

RePEc Handle
repec:eee:econom:v:235:y:2023:i:2:p:2195-2217
Journal Field
Econometrics
Author Count
2
Added to Database
2026-01-25