摘要
本文运用机器学习方法对纵向数据与生存数据建模,以机器学习方法代替纵向子模型中的线性随机效应模型;生存子模型仍运用Cox比例危险模型。与传统的建模方法做对比,此建模方法的生存子模型残差图诊断符合理论结果,纵向子模型的残差要比线性混合模型分散。
In this paper, machine learning methods for longitudinal data and survival data modeling, replace the longitudinal sub-model linear random effects model;survival sub-model still uses Cox propor-tional hazards model. Compared with the traditional method, the residuals plots of survival sub- model diagnose modeling methods in line with theoretical results and the residuals of the longi-tudinal sub models are more dispersed than the linear mixed model.
出处
《统计学与应用》
2015年第4期252-261,共10页
Statistical and Application