Causal Inference

Difference in Differences: A Causal Effect Estimation Method
Difference in Differences (DiD) is a statistical technique used to estimate the causal effect of a treatment or policy intervention using panel data. It compares the average changes over time between treated and untreated groups.
Propensity Score Matching: Estimation of Causal Effects in Observational Data
Propensity Score Matching is a statistical method used to estimate the causal effect of a treatment or policy intervention in observational data by comparing the outcomes of treated and untreated subjects who are otherwise similar in their observed characteristics.
Regression Discontinuity Design: A Causal Inference Technique
Regression Discontinuity Design (RDD) is a statistical method used to estimate the causal effect of an intervention by assigning treatment based on a continuous assignment variable threshold.
Regression Kink Design: Causal Effect Estimation with Policy Variable Discontinuities
A comprehensive exploration of Regression Kink Design, a method of estimation designed to find causal effects when policy variables have discontinuities in their first derivative. Explore historical context, key events, formulas, diagrams, applications, and more.

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