| Literature DB >> 35706613 |
Q F Xu1,2, X H Ding1, C X Jiang1, K M Yu3, L Shi4.
Abstract
To perform variable selection in expectile regression, we introduce the elastic-net penalty into expectile regression and propose an elastic-net penalized expectile regression (ER-EN) model. We then adopt the semismooth Newton coordinate descent (SNCD) algorithm to solve the proposed ER-EN model in high-dimensional settings. The advantages of ER-EN model are illustrated via extensive Monte Carlo simulations. The numerical results show that the ER-EN model outperforms the elastic-net penalized least squares regression (LSR-EN), the elastic-net penalized Huber regression (HR-EN), the elastic-net penalized quantile regression (QR-EN) and conventional expectile regression (ER) in terms of variable selection and predictive ability, especially for asymmetric distributions. We also apply the ER-EN model to two real-world applications: relative location of CT slices on the axial axis and metabolism of tacrolimus (Tac) drug. Empirical results also demonstrate the superiority of the ER-EN model.Entities:
Keywords: 62J05; Expectile regression; SNCD; elastic-net; high-dimensional data; variable selection
Year: 2020 PMID: 35706613 PMCID: PMC9041692 DOI: 10.1080/02664763.2020.1787355
Source DB: PubMed Journal: J Appl Stat ISSN: 0266-4763 Impact factor: 1.416