时间:12月4日(周四)下午4:00-5:00
地点:京师学堂三层第七会议室
报告人:Xingqiu Zhao
题目: Structure Estimation in the Partially Linear Cox Model
摘要:
The partially linear Cox model assumes that it is known a priori which covariates have a linear effect and which do not on the log hazards function. However, this is rarely known in practice. We propose a semiparametric pursuit method to simultaneously detect and estimate linear and nonlinear covariate effects on the log hazards function through a penalized group selection method with concave folded penalties. The unknown smoothing functions of the nonlinear component are approximated by the B-splines. Both the parametric and nonparametric estimators are consistent, and the parametric estimator is asymptotically normal. We develop a modified blockwise majorization descent algorithm that is easy to implement and has a fast convergence rate. Simulation studies indicate that the proposed method works well, and the primary biliary cirrhosis data are analyzed for illustration.