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 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 (RDD) is a statistical method used to estimate the causal effect of an intervention by assigning treatment based on a continuous assignment variable threshold.
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.
Our mission is to empower you with the tools and knowledge you need to make informed decisions, understand intricate financial concepts, and stay ahead in an ever-evolving market.