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.

Permission is required for interchange registration during the add/drop period only.