| Literature DB >> 28008212 |
Qi Zheng1, Limin Peng1.
Abstract
Quantile regression provides a flexible platform for evaluating covariate effects on different segments of the conditional distribution of response. As the effects of covariates may change with quantile level, contemporaneously examining a spectrum of quantiles is expected to have a better capacity to identify variables with either partial or full effects on the response distribution, as compared to focusing on a single quantile. Under this motivation, we study a general adaptively weighted LASSO penalization strategy in the quantile regression setting, where a continuum of quantile index is considered and coefficients are allowed to vary with quantile index. We establish the oracle properties of the resulting estimator of coefficient function. Furthermore, we formally investigate a BIC-type uniform tuning parameter selector and show that it can ensure consistent model selection. Our numerical studies confirm the theoretical findings and illustrate an application of the new variable selection procedure.Entities:
Keywords: Bayesian information criterion; Quantile regression; Shrinkage estimation; Varying covariate effects
Year: 2016 PMID: 28008212 PMCID: PMC5166990 DOI: 10.1080/03610926.2015.1010009
Source DB: PubMed Journal: Commun Stat Theory Methods ISSN: 0361-0926 Impact factor: 0.893