dongxiaogang
- Professor
- Supervisor of Doctorate Candidates
- Supervisor of Master's Candidates
- Name (Pinyin):dongxiaogang
- Date of Birth:1961-04-25
- E-Mail:
- Date of Employment:2001-08-01
- School/Department:数学与统计学院
- Administrative Position:校教学指导委员会主任
- Education Level:Postgraduate (Postdoctoral)
- Business Address:长春工业大学南湖校区新图书馆6楼
- Degree:Doctoral degree
- Professional Title:Professor
- Status:Employed
- Alma Mater:吉林大学
- Teacher College:数学与统计学院
- Discipline:Other specialties in Statistics
Contact Information
- OfficePhone:
- Email:
- Paper Publications
【外博SCI】Bayesian empirical likelihood and variable selection for censored linear model with applications to acute myelogenous leukemia data
Release time:2022-06-15 Hits:
- Affiliation of Author(s):数学与统计学院
- Teaching and Research Group:统计教研室
- Journal:International Journal of Biomathematics
- Funded by:省、市、自治区科技项目
- Key Words:Bayesian empirical likelihood; censored linear regression; coverage probabilities;
- Abstract:This paper develops the Bayesian empirical likelihood (BEL) method and the BEL variable selection for linear regression models with censored data. Empirical likelihood is a multivariate analysis tool that has been widely applied to many fields such as biomedical and social sciences. By introducing two special priors to the empirical likelihood function, we find two obvious superiorities of the BEL methods, that is (i) more precise coverage probabilities of the BEL credible region and (ii) higher accuracy and correct identification rate of the BEL model selection using an hierarchical Bayesian model, vs. some current methods such as the LASSO, ALASSO and SCAD. The numerical simulations and empirical analysis of two data examples show strong competitiveness of the proposed method.
- Co-author:赵洪梅,dongxiaogang
- First Author:Li Chunjing
- Indexed by:Journal paper
- Volume:12
- Issue:5
- Page Number:1
- ISSN No.:5000
- Translation or Not:no
- Date of Publication:2019-05-29