JOURNAL ARTICLE

SMOOTHED EMPIRICAL LIKELIHOOD METHODS FOR QUANTILE REGRESSION MODELS

Yoon‐Jae Whang

Year: 2006 Journal:   Econometric Theory Vol: 22 (02)   Publisher: Cambridge University Press

Abstract

This paper considers an empirical likelihood method to estimate the parameters of the quantile regression (QR) models and to construct confidence regions that are accurate in finite samples. To achieve the higher-order refinements, we smooth the estimating equations for the empirical likelihood. We show that the smoothed empirical likelihood (SEL) estimator is first-order asymptotically equivalent to the standard QR estimator and establish that confidence regions based on the smoothed empirical likelihood ratio have coverage errors of order n^{-1} and may be Bartlett-corrected to produce regions with an error of order n^{-2}, where n denotes the sample size. We further extend these results to censored quantile regression models. Our results are extensions of the previous results of Chen and Hall (1993) to the regression contexts. Monte Carlo experiments suggest that the smoothed empirical likelihood confidence regions may be more accurate in small samples than the confidence regions that can be constructed from the smoothed bootstrap method recently suggested by Horowitz (1998).

Keywords:
Empirical likelihood Mathematics Estimator Statistics Quantile Quantile regression Confidence and prediction bands Confidence region Econometrics Confidence interval Regression analysis

Metrics

4
Cited By
0.00
FWCI (Field Weighted Citation Impact)
51
Refs
0.20
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Statistical Methods and Inference
Physical Sciences →  Mathematics →  Statistics and Probability
Statistical Methods and Bayesian Inference
Physical Sciences →  Mathematics →  Statistics and Probability
Advanced Statistical Methods and Models
Physical Sciences →  Mathematics →  Statistics and Probability

Related Documents

JOURNAL ARTICLE

Smoothed Empirical Likelihood Inference for Nonlinear Quantile Regression Models with Missing Response

Honghua DongXiuli Wang

Journal:   Open Journal of Applied Sciences Year: 2023 Vol: 13 (06)Pages: 921-933
JOURNAL ARTICLE

Smoothed empirical likelihood for quantile regression models with response data missing at random

Shuanghua LuoChanglin MeiChengyi Zhang

Journal:   AStA Advances in Statistical Analysis Year: 2016 Vol: 101 (1)Pages: 95-116
JOURNAL ARTICLE

Conditional empirical likelihood for quantile regression models

Wu WangZhongyi Zhu

Journal:   Metrika Year: 2016 Vol: 80 (1)Pages: 1-16
JOURNAL ARTICLE

Smoothed empirical likelihood analysis of partially linear quantile regression models with missing response variables

Xiaofeng LvRui Li

Journal:   AStA Advances in Statistical Analysis Year: 2013 Vol: 97 (4)Pages: 317-347
© 2026 ScienceGate Book Chapters — All rights reserved.