Authors
Kosuke Imai, Marc Ratkovic
Publication date
2014
Journal
Journal of the Royal Statistical Society, Series B (Statistical Methodology)
Volume
76
Issue
1
Pages
243-263
Description
The propensity score plays a central role in a variety of causal inference settings. In particular, matching and weighting methods based on the estimated propensity score have become increasingly common in the analysis of observational data. Despite their popularity and theoretical appeal, the main practical difficulty of these methods is that the propensity score must be estimated. Researchers have found that slight misspecification of the propensity score model can result in substantial bias of estimated treatment effects. We introduce covariate balancing propensity score (CBPS) methodology, which models treatment assignment while optimizing the covariate balance. The CBPS exploits the dual characteristics of the propensity score as a covariate balancing score and the conditional probability of treatment assignment. The estimation of the CBPS is done within the generalized method-of-moments or …
Total citations
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Scholar articles
K Imai, M Ratkovic - Journal of the Royal Statistical Society Series B …, 2014