CIMTx - Causal Inference for Multiple Treatments with a Binary Outcome
Different methods to conduct causal inference for multiple
treatments with a binary outcome, including regression
adjustment, vector matching, Bayesian additive regression
trees, targeted maximum likelihood and inverse probability of
treatment weighting using different generalized propensity
score models such as multinomial logistic regression,
generalized boosted models and super learner. For more details,
see the paper by Hu et al. <doi:10.1177/0962280220921909>.