Volume 84, Issue 3
Original Article

Posterior Inference in Bayesian Quantile Regression with Asymmetric Laplace Likelihood

Yunwen Yang

Google Inc., Seattle, 98103 WA

Search for more papers by this author
Huixia Judy Wang

Department of Statistics, George Washington University, Washington, 20052 DC, USA

Search for more papers by this author
Xuming He

E-mail address: xmhe@umich.edu

Department of Statistics, University of Michigan, Ann Arbor, 48109 MI, USA

Search for more papers by this author
First published: 13 August 2015
Citations: 23

Summary

The paper discusses the asymptotic validity of posterior inference of pseudo‐Bayesian quantile regression methods with complete or censored data when an asymmetric Laplace likelihood is used. The asymmetric Laplace likelihood has a special place in the Bayesian quantile regression framework because the usual quantile regression estimator can be derived as the maximum likelihood estimator under such a model, and this working likelihood enables highly efficient Markov chain Monte Carlo algorithms for posterior sampling. However, it seems to be under‐recognised that the stationary distribution for the resulting posterior does not provide valid posterior inference directly. We demonstrate that a simple adjustment to the covariance matrix of the posterior chain leads to asymptotically valid posterior inference. Our simulation results confirm that the posterior inference, when appropriately adjusted, is an attractive alternative to other asymptotic approximations in quantile regression, especially in the presence of censored data.

Number of times cited according to CrossRef: 23

  • Bayesian quantile regression with the asymmetric Laplace distribution, Flexible Bayesian Regression Modelling, 10.1016/B978-0-12-815862-3.00007-X, (1-25), (2020).
  • Robust Bayesian small area estimation based on quantile regression, Computational Statistics & Data Analysis, 10.1016/j.csda.2019.106900, (106900), (2020).
  • Bayesian Quantile Bent-Cable Growth Models for Longitudinal Data with Skewness and Detection Limit, Statistics in Biosciences, 10.1007/s12561-020-09287-y, (2020).
  • Bayesian joint-quantile regression, Computational Statistics, 10.1007/s00180-020-00998-w, (2020).
  • Bayesian quantile nonhomogeneous hidden Markov models, Statistical Methods in Medical Research, 10.1177/0962280220942802, (096228022094280), (2020).
  • Discerning excellence from mediocrity in swimming: new insights using Bayesian quantile regression, European Journal of Sport Science, 10.1080/17461391.2020.1808080, (1-21), (2020).
  • Bayesian Quantile Regression Methods in Handling Non-normal and Heterogeneous Error Term, Asian Journal of Scientific Research, 10.3923/ajsr.2019.346.351, 12, 3, (346-351), (2019).
  • Quantile Stochastic Frontiers, European Journal of Operational Research, 10.1016/j.ejor.2019.10.012, (2019).
  • How Does Industrial Waste Gas Emission Affect Health Care Expenditure in Different Regions of China: An Application of Bayesian Quantile Regression, International Journal of Environmental Research and Public Health, 10.3390/ijerph16152748, 16, 15, (2748), (2019).
  • A latent class based imputation method under Bayesian quantile regression framework using asymmetric Laplace distribution for longitudinal medication usage data with intermittent missing values, Journal of Biopharmaceutical Statistics, 10.1080/10543406.2019.1684306, (1-18), (2019).
  • Is Carbon Dioxide (CO2) Emission an Important Factor Affecting Healthcare Expenditure? Evidence from China, 2005–2016, International Journal of Environmental Research and Public Health, 10.3390/ijerph16203995, 16, 20, (3995), (2019).
  • On a heavy-tailed parametric quantile regression model for limited range response variables, Computational Statistics, 10.1007/s00180-019-00898-8, (2019).
  • Projection of Long-Term Care Costs in China, 2020–2050, Based on the Bayesian Quantile Regression Method, Sustainability, 10.3390/su11133530, 11, 13, (3530), (2019).
  • Influencing factors of disability among the elderly in China, 2003-2016: application of Bayesian quantile regression, Journal of Medical Economics, 10.1080/13696998.2019.1600525, (1-1), (2019).
  • Modelling and estimation of nonlinear quantile regression with clustered data, Computational Statistics & Data Analysis, 10.1016/j.csda.2018.12.005, (2018).
  • Recovering Distributions for the Estimation of Treatment Effects Under Partly Unobserved Treatment with Repeated Cross-Sections, SSRN Electronic Journal, 10.2139/ssrn.3194286, (2018).
  • Estimation and Testing in M‐quantile Regression with Applications to Small Area Estimation, International Statistical Review, 10.1111/insr.12267, 86, 3, (541-570), (2018).
  • Bayesian quantile regression using the skew exponential power distribution, Computational Statistics & Data Analysis, 10.1016/j.csda.2018.04.008, 126, (92-111), (2018).
  • A Hybrid MCMC Sampler for Unconditional Quantile Based on Influence Function, Econometrics, 10.3390/econometrics6020024, 6, 2, (24), (2018).
  • Quantile-Regression Inference With Adaptive Control of Size, Journal of the American Statistical Association, 10.1080/01621459.2018.1505624, (1-12), (2018).
  • Conditional empirical likelihood for quantile regression models, Metrika, 10.1007/s00184-016-0588-6, 80, 1, (1-16), (2016).
  • Discussion, International Statistical Review, 10.1111/insr.12164, 84, 3, (356-359), (2016).
  • Discussion, International Statistical Review, 10.1111/insr.12165, 84, 3, (359-362), (2016).

The full text of this article hosted at iucr.org is unavailable due to technical difficulties.