Synthetic Control Policy Lab

For situations where randomization is impossible and parallel trends are questionable.


Overview

When evaluating policies that affect entire units (states, countries, organizations), traditional methods often fail. Synthetic control constructs a counterfactual from weighted combinations of donor units, providing rigorous causal inference even with a single treated unit.


Methods

Classic Synthetic Control

Uncertainty Quantification


When to Use This

Good fit:

Not ideal:


Key Assumptions

  1. No anticipation: Units don’t change behavior before treatment
  2. No spillovers: Treatment doesn’t affect control units
  3. Convex hull: Treated unit is within the range of controls