Group penalized expectile regression

被引:0
|
作者
Ouhourane, Mohamed [1 ]
Oualkacha, Karim [1 ]
Yang, Archer Yi [2 ]
机构
[1] Univ Quebec Montreal, Dept Math, 201 Ave President Kennedy, Montreal, PQ H2X 3Y7, Canada
[2] McGill Univ, Dept Math & Stat, 805 Sherbrooke St West, Montreal, PQ H3A 0B9, Canada
基金
加拿大自然科学与工程研究理事会;
关键词
Expectile; Regression; Lasso; Heterogeneity; QUANTILE REGRESSION; VARIABLE SELECTION; DANTZIG SELECTOR; BIRTH-WEIGHT; GROUP LASSO; LIKELIHOOD; ASSOCIATION; SMOKING;
D O I
10.1007/s10260-024-00768-8
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
The asymmetric least squares regression (or expectile regression) allows estimating unknown expectiles of the conditional distribution of a response variable as a function of a set of predictors and can handle heteroscedasticity issues. High dimensional data, such as omics data, are error prone and usually display heterogeneity. Such heterogeneity is often of scientific interest. In this work, we propose the Group Penalized Expectile Regression (GPER) approach, under high dimensional settings. GPER considers implementation of sparse expectile regression with group Lasso penalty and the group non-convex penalties. However, GPER may fail to tell which groups variables are important for the conditional mean and which groups of variables are important for the conditional scale/variance. To that end, we further propose a COupled Group Penalized Expectile Regression (COGPER) regression which can be efficiently solved by an algorithm similar to that for solving GPER. We establish theoretical properties of the proposed approaches. In particular, GPER and COGPER using the SCAD penalty or MCP is shown to consistently identify the two important subsets for the mean and scale simultaneously. We demonstrate the empirical performance of GPER and COGPER by simulated and real data.
引用
收藏
页数:63
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