This document provides a guide for implementing propensity score matching (PSM) to evaluate development programs. PSM is a nonexperimental method that uses observational data to estimate a program's average treatment effect by matching treated participants with untreated comparisons based on propensity scores.
The guide first discusses why nonexperimental methods like PSM are often needed to evaluate real-world programs when randomized experiments are not feasible. It then explains the assumptions and data requirements for using PSM, including the conditional independence assumption and overlap condition. The guide describes how PSM works, including estimating propensity scores, different matching algorithms, and estimating and interpreting impact results. It also provides suggestions for testing assumptions and matching quality. Case studies are