Quantile regression without the curse of unsmoothness


Autoria(s): Wang, You-Gan; Shao, Quanxi; Zhu, Min
Data(s)

28/03/2009

Resumo

We consider quantile regression models and investigate the induced smoothing method for obtaining the covariance matrix of the regression parameter estimates. We show that the difference between the smoothed and unsmoothed estimating functions in quantile regression is negligible. The detailed and simple computational algorithms for calculating the asymptotic covariance are provided. Intensive simulation studies indicate that the proposed method performs very well. We also illustrate the algorithm by analyzing the rainfall–runoff data from Murray Upland, Australia.

Identificador

http://eprints.qut.edu.au/54060/

Publicador

Elsvier

Relação

DOI:10.1016/j.csda.2009.03.012

Wang, You-Gan, Shao, Quanxi, & Zhu, Min (2009) Quantile regression without the curse of unsmoothness. Computational Statistics and Data Analysis, 53(10), pp. 3696-3705.

Direitos

Crown Copyright 2009 Elsevier B.V.

Fonte

QUT Business School; School of Economics & Finance

Palavras-Chave #quantile regression #standard error
Tipo

Journal Article