Bayesian empirical likelihood for quantile regression

  • Yunwen Yang
  • , Xuming He

Research output: Contribution to journalArticlepeer-review

108 Scopus citations

Abstract

Bayesian inference provides a flexible way of combining data with prior information. However, quantile regression is not equipped with a parametric likelihood, and therefore, Bayesian inference for quantile regression demands careful investigation. This paper considers the Bayesian empirical likelihood approach to quantile regression. Taking the empirical likelihood into a Bayesian framework, we show that the resultant posterior from any fixed prior is asymptotically normal; its mean shrinks toward the true parameter values, and its variance approaches that of the maximum empirical likelihood estimator. A more interesting case can be made for the Bayesian empirical likelihood when informative priors are used to explore commonality across quantiles. Regression quantiles that are computed separately at each percentile level tend to be highly variable in the data sparse areas (e.g., high or low percentile levels). Through empirical likelihood, the proposed method enables us to explore various forms of commonality across quantiles for efficiency gains. By using an MCMC algorithm in the computation, we avoid the daunting task of directly maximizing empirical likelihood. The finite sample performance of the proposed method is investigated empirically, where substantial efficiency gains are demonstrated with informative priors on common features across several percentile levels. A theoretical framework of shrinking priors is used in the paper to better understand the power of the proposed method.

Original languageEnglish
Pages (from-to)1102-1131
Number of pages30
JournalAnnals of Statistics
Volume40
Issue number2
DOIs
StatePublished - Apr 2012

Keywords

  • Efficiency
  • Empirical likelihood
  • High quantiles
  • Posterior
  • Prior

Fingerprint

Dive into the research topics of 'Bayesian empirical likelihood for quantile regression'. Together they form a unique fingerprint.

Cite this