Back to Search Start Over

On sign-based regression quantiles

Authors :
Sergey Tarima
Peter Tarassenko
A.V. Zhuravlev
Siddhartha Singh
Source :
Journal of statistical computation and simulation. 2015. Vol. 85, № 7. P. 1420-1441
Publication Year :
2015

Abstract

A sign-based (SB) approach suggests an alternative criterion for quantile regression fit. The SB criterion is a piecewise constant function, which often leads to a non-unique solution. We compare the mid-point of this SB solution with the least absolute deviations (LAD) method and describe asymptotic properties of SB estimators under a weaker set of assumptions as compared with the assumptions often used with the generalized method of moments. Asymptotic properties of LAD and SB estimators are equivalent; however, there are finite sample differences as we show in simulation studies. At small to moderate sample sizes, the SB procedure for modelling quantiles at longer tails demonstrates a substantially lower bias, variance, and mean-squared error when compared with the LAD. In the illustrative example, we model a 0.8-level quantile of hospital charges and highlight finite sample advantage of the SB versus LAD.

Details

Language :
English
Database :
OpenAIRE
Journal :
Journal of statistical computation and simulation. 2015. Vol. 85, № 7. P. 1420-1441
Accession number :
edsair.doi.dedup.....eacbd5ec54fe423372b7f744de628451