清华主页 EN
导航菜单

Causal inference

来源: 06-23

时间:Mon.-Fri., 10:00 am-12:00 / 13:00-15:00 June 24-July 12, 2024 (excluding Fri., 13:00-15:00)

地点:C654, Shuangqing Complex Building A 清华大学双清综合楼A座 C654

主讲人:Per Johansson

Content:

Potential outcomes, theory and assumptions

Fisher's exact test, Neymans approach to completely randomized experiments and model based (Bayesian) inference

Causal effect estimators, propensity score - model building, stratification, matching and weighing

Variance estimation

Instrumental variables


Instruction:

Instruction is given in the form of in-class lectures.

Computer exercises/assignments will be distributed. Solutions are to be presented by students and discussed in the class (Discuss).


Book:

Imbens Guido W. and Donald B. Rubin (IR), Causal inference in statistics, social, and biomedical sciences, Cambridge University Press.


More information:

https://ymsc.tsinghua.edu.cn/en/info/1047/2798.htm


返回顶部
相关文章
  • Topics in causal inference

    SpeakerPeng Ding is an Associate Professor in the Department of Statistics, UC Berkeley, working on causal inference. He obtained his Ph.D. from the Department of Statistics and worked as a postdoctoral researcher in the Department of Epidemiology, both at Harvard.Course DescriptionThis course will cover the following basic topics:- randomization inference in experiments: design and analysis- o...

  • Recent advances in causal inference

    Description:I will give four lectures based on the following papers.Gao, M. and Ding. P. (2023+). Causal inference in network experiments: regression-based analysis and design-based properties.Lu, S. and Ding, P. (2023+). Flexible sensitivity analysis for causal inference in observational studies subject to unmeasured confounding.Lu, S., Jiang, Z. and Ding, P. (2023+) Principal Stratification w...