PAPD: Estimation of the Population Average Prescription Difference in Randomized Experiments
Description
This function estimates the Population Average Prescription Difference with a budget
constraint. The details of the methods for this design are given in Imai and Li (2019).
Usage
PAPD(Tr, Thatfp, Thatgp, Y, plim, centered = TRUE)
Arguments
Tr
A vector of the unit-level binary treatment receipt variable for each sample.
Thatfp
A vector of the unit-level binary treatment that would have been assigned by the
first individualized treatment rule. Please ensure that the percentage of treatment units of That is lower than the budget constraint.
Thatgp
A vector of the unit-level binary treatment that would have been assigned by the
second individualized treatment rule. Please ensure that the percentage of treatment units of That is lower than the budget constraint.
Y
A vector of the outcome variable of interest for each sample.
plim
The maximum percentage of population that can be treated under the
budget constraint. Should be a decimal between 0 and 1.
centered
If TRUE, the outcome variables would be centered before processing. This minimizes
the variance of the estimator. Default is TRUE.
Value
A list that contains the following items:
papd
The estimated
Population Average Prescription Difference
sd
The estimated standard deviation
of PAPD.
References
Imai and Li (2019). “Experimental Evaluation of Individualized Treatment Rules”,