A tutorial on propensity score estimation for multiple treatments using generalized boosted models
RAND Corporation · Institute for Social Research
Abstract
The use of propensity scores to control for pretreatment imbalances on observed variables in non-randomized or observational studies examining the causal effects of treatments or interventions has become widespread over the past decade. For settings with two conditions of interest such as a treatment and a control, inverse probability of treatment weighted estimation with propensity scores estimated via boosted models has been shown in simulation studies to yield causal effect estimates with desirable properties. There are tools (e.g., the twang package in R) and guidance for implementing this method with two treatments. However, there is not such guidance for analyses of three or more treatments. The goals of…
Citation impact
- FWCI
- 35.47
- Percentile
- 100%
- References
- 52
Authors
6Topics & keywords
- Propensity score matching
- Observational study
- Causal inference
- Estimator
- Average treatment effect
- Context (archaeology)
- Weighting
- Marginal structural model
- Good health and well-being