PSW - Propensity Score Weighting Methods for Dichotomous Treatments
Provides propensity score weighting methods to control for
confounding in causal inference with dichotomous treatments and
continuous/binary outcomes. It includes the following
functional modules: (1) visualization of the propensity score
distribution in both treatment groups with mirror histogram,
(2) covariate balance diagnosis, (3) propensity score model
specification test, (4) weighted estimation of treatment
effect, and (5) augmented estimation of treatment effect with
outcome regression. The weighting methods include the inverse
probability weight (IPW) for estimating the average treatment
effect (ATE), the IPW for average treatment effect of the
treated (ATT), the IPW for the average treatment effect of the
controls (ATC), the matching weight (MW), the overlap weight
(OVERLAP), and the trapezoidal weight (TRAPEZOIDAL). Sandwich
variance estimation is provided to adjust for the sampling
variability of the estimated propensity score. These methods
are discussed by Hirano et al (2003)
<DOI:10.1111/1468-0262.00442>, Lunceford and Davidian (2004)
<DOI:10.1002/sim.1903>, Li and Greene (2013)
<DOI:10.1515/ijb-2012-0030>, and Li et al (2016)
<DOI:10.1080/01621459.2016.1260466>.