Augmented Inverse Probability Weighting


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Documentation for package ‘AIPW’ version 0.6.9

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AIPW Augmented Inverse Probability Weighting (AIPW)
AIPW_base Augmented Inverse Probability Weighting Base Class (AIPW_base)
AIPW_nuis Augmented Inverse Probability Weighting (AIPW) uses tmle or tmle3 as inputs
AIPW_tmle Augmented Inverse Probability Weighting (AIPW) uses tmle or tmle3 as inputs
aipw_wrapper AIPW wrapper function
eager_sim_obs Simulated Observational Study
eager_sim_rct Simulated Randomized Trial
fit Fit the data to the AIPW object
fit.AIPW Fit the data to the AIPW object
plot.ip_weights Plot the inverse probability weights using truncated propensity scores by exposure status
plot.p_score Plot the propensity scores by exposure status
Repeated Repeated Crossfitting Procedure for AIPW
repfit Fit the data to the AIPW object repeatedly
repfit.Repeated Fit the data to the AIPW object repeatedly
stratified_fit Fit the data to the AIPW object stratified by 'A' for the outcome model
stratified_fit.AIPW Fit the data to the AIPW object stratified by 'A' for the outcome model
summary Summary of the average treatment effects from AIPW
summary.AIPW_base Summary of the average treatment effects from AIPW
summary_median Summary of the 'repeated_estimates' from 'repfit()' in the Repeated object using median methods.
summary_median.Repeated Summary of the 'repeated_estimates' from 'repfit()' in the Repeated object using median methods.