A tutorial on propensity score estimation for multiple treatments using generalized boosted models

1.0k indexed citations

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This paper, published in 2013, received 1.0k indexed citations. Written by Daniel F. McCaffrey, Beth Ann Griffin, Daniel Almirall, Mary E. Slaughter, Rajeev Ramchand and Lane F. Burgette covering the research area of Statistics and Probability and Education. It is primarily cited by scholars working on Statistics and Probability (185 citations), Cardiology and Cardiovascular Medicine (179 citations) and Surgery (175 citations). Published in Statistics in Medicine.

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This paper is also available at doi.org/10.1002/sim.5753.

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