Propensity Score Matching

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Propensity Score Matching(PSM) is a quasi-experimental impact evaluation technique which attempts to estimate the effects of a treatment by matching control group participants to treatment group participants based on propensity score(predicted probability of participation based on observed characteristics). This is done to reduce the selection bias that may be present in non-experimental data.


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  • The efficacy of a PSM design depends mostly on how well the observed characters determine program participation. If the bias from unobserved characteristics are likely to be very small, PSM provides us with good estimates and if the bias from unobserved characteristics are large, then the estimates from the PSM can be sizably biased.

Examples of Studies using Propensity Score Matching

Here are some of the examples of impact evaluation journal articles using Propensity score matching:

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This article is part of the topic Impact Evaluation Design.

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