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学术动态

学术报告通知(编号:2023-19)

发布时间:2023-07-28 浏览次数:

报告题目:动态决策的因果推断机器学习

报告人:王璐 教授

单位:密西根大学生物统计学系

报告时间:2023年8月2号(周三)上午10:00-11:00

报告地点:翡翠科教楼A座1602



报告摘要:

In this talk, we present recent advances and statistical causal learning developments for evaluating Dynamic Treatment Regimes (DTR), which allow the treatment to be dynamically tailored according to evolving subject-level data. Identification of an optimal DTR is a key component for precision medicine and personalized health care. We will first present a tree-based doubly robust reinforcement learning (T-RL) method, which builds a decision tree that maintains the nature of batch-mode reinforcement learning, and then a new Stochastic-Tree Search method called ST-RL for evaluating optimal DTRs, which contributes to the existing literature in its non-greedy policy search and demonstrates outstanding performances even with a large number of covariates. In addition, we consider a common challenge with practical “restrictions” and develop a Restricted Tree-based Reinforcement Learning (RT-RL) method to address this challenge. We illustrate the method using an observational dataset to estimate a two-stage stepped-up DTR for guiding the level of care placement for adolescents with substance use disorder.



个人简介:王璐,博士,现任美国密西根大学生物统计学系终身教授,系副主任。2002年本科毕业于北京大学,2008年博士毕业于哈佛大学。研究领域包括评估优化动态治疗方案的统计方法、个性化医疗、因果推断、非参数和半参数回归、缺失数据分析、以及纵向(相关/聚类)数据分析等。在JASA、Biometrika、Biometrics、AoAS等学术期刊上发表论文139余篇,并合著了一章书籍。现任JASA和Biometrics的副主编。


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