Biostatistics 683 - Intro to Causal Inference
Spring
2025
01
3.00
Aaron Sarvet
M W 2:30PM 3:45PM
UMass Amherst
51368
Arnold Room 140
asarvet@umass.edu
With the recent and ongoing 'data explosion', methods to delineate causation from correlation are perhaps more pressing now than ever. This course will introduce a general framework for causal inference: 1) clear statement of the scientific question, 2) definition of the causal model and parameter of interest, 3) assessment of identifiability, 4) choice and implementation of estimators including parametric and semi-parametric methods, and 5) interpretation of findings. The methods include G-computation, inverse-weighting, and targeted maximum likelihood estimation (TMLE) with Super Learning, an ensemble machine learning method. Students gain practical experience implementing these estimators and interpreting results through discussion assignments, R labs, R assignments, and a final project. Recommended: a graduate course in Epidemiology (e.g. EPI 630).
Prerequisites: NONE. Recommended: (1) graduate-level coursework covering basic probability theory and regression modelling; (2) a graduate course in Epidemiology (e.g. Epi630)
This course is a course where instruction is delivered across different modalities (https://www.umass.edu/flex/students). Students have the option to attend either in-person (at the Amherst campus) or online. If you choose to attend class virtually, you are required to join the Zoom meeting synchronously.