Boosting(机器学习)
计算机科学
事件数据
机器学习
人工智能
特征选择
数据挖掘
贝叶斯概率
事件(粒子物理)
纵向磁场
协变量
物理
量子力学
磁场
作者
Elisabeth Waldmann,David Taylor‐Robinson,Nadja Klein,Thomas Kneib,T. Pressler,Matthias Schmid,Andreas Mayr
标识
DOI:10.1002/bimj.201600158
摘要
Abstract Joint models for longitudinal and time‐to‐event data have gained a lot of attention in the last few years as they are a helpful technique clinical studies where longitudinal outcomes are recorded alongside event times. Those two processes are often linked and the two outcomes should thus be modeled jointly in order to prevent the potential bias introduced by independent modeling. Commonly, joint models are estimated in likelihood‐based expectation maximization or Bayesian approaches using frameworks where variable selection is problematic and that do not immediately work for high‐dimensional data. In this paper, we propose a boosting algorithm tackling these challenges by being able to simultaneously estimate predictors for joint models and automatically select the most influential variables even in high‐dimensional data situations. We analyze the performance of the new algorithm in a simulation study and apply it to the Danish cystic fibrosis registry that collects longitudinal lung function data on patients with cystic fibrosis together with data regarding the onset of pulmonary infections. This is the first approach to combine state‐of‐the art algorithms from the field of machine‐learning with the model class of joint models, providing a fully data‐driven mechanism to select variables and predictor effects in a unified framework of boosting joint models.
科研通智能强力驱动
Strongly Powered by AbleSci AI