Foundations of Causal Inference

Causal Inference
Foundations
Lecture Notes

This course builds the conceptual foundation for causal inference. The emphasis is on learning to state the question before estimating anything: what action is being considered, what counterfactual comparison is required, who the estimand is about, and which assumptions connect the observed data to the desired causal claim.

The objective is to make causal reasoning explicit enough that a project can be audited. By the end of the course, a reader should be able to distinguish prediction from intervention, define ATE/ATT/ATC/CATE-style estimands, explain the role of identification assumptions, use DAGs to communicate causal structure, and recognize when adjustment choices change the causal question.

Density plot showing imbalance created by a ranking policy

Figure: A ranking-policy imbalance plot used to make confounding visible before any estimator is introduced (adapted from Lecture 08: Confounders, Mediators, Colliders, and Selection Bias).

Lecture Sequence

01. What Is a Causal Question?

This lecture connects What Is a Causal Question? to estimands, assumptions, counterfactual reasoning, and common design failures.