Abstract
Abstract$$L^p$$
L
p
-quantiles are a class of generalized quantiles defined as minimizers of an asymmetric power function. They include both quantiles, $$p=1$$
p
=
1
, and expectiles, $$p=2$$
p
=
2
, as special cases. This paper studies composite $$L^p$$
L
p
-quantile regression, simultaneously extending single $$L^p$$
L
p
-quantile regression and composite quantile regression. A Bayesian approach is considered, where a novel parameterization of the skewed exponential power distribution is utilized. Further, a Laplace prior on the regression coefficients allows for variable selection. Through a Monte Carlo study and applications to empirical data, the proposed method is shown to outperform Bayesian composite quantile regression in most aspects.
Publisher
Springer Science and Business Media LLC