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Some Practical Guidance for the Implementation of Propensity Score Matching
| Authors | Caliendo, M. and Kopeinig, S. |
| Year | 2008 |
| Reference | Journal of Economic Surveys, 22(1), 31-72.  |
| Keywords | Propensity Score Matching,
Implementation, Evaluation, Sensitivity Analysis |
| JEL-Classification | C40, H43 |
| Download | Revised version from April 2006:  PDF IZA Discussion Paper from May 2005:  PDF
| | Abstract | Propensity Score Matching (PSM) has
become a popular approach to estimate causal treatment effects. It
is widely applied when evaluating labour market policies, but
empirical examples can be found in very diverse fields of study.
Once the researcher has decided to use PSM, he is confronted with
a lot of questions regarding its implementation. To begin with, a
first decision has to be made concerning the estimation of the
propensity score. Following that one has to decide which matching
algorithm to choose and determine the region of common support.
Subsequently, the matching quality has to be assessed and
treatment effects and their standard errors have to be estimated.
Furthermore, questions like 'what to do if there is choice-based
sampling?' or 'when to measure effects?' can be important in
empirical studies. Finally, one might also want to test the
sensitivity of estimated treatment effects with respect to
unobserved heterogeneity or failure of the common support
condition. Each implementation step involves a lot of decisions
and different approaches can be thought of. The aim of this paper
is to discuss these implementation issues and give some guidance
to researchers who want to use PSM for evaluation purposes. |
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