PAVcv {evalITR} | R Documentation |
Estimation of the Population Average Value in Randomized Experiments Under Cross Validation
Description
This function estimates the Population Average Value. The details of the methods for this design are given in Imai and Li (2019).
Usage
PAVcv(T, That, Y, ind, centered = TRUE)
Arguments
T |
A vector of the unit-level binary treatment receipt variable for each sample. |
That |
A matrix where the |
Y |
The outcome variable of interest. |
ind |
A vector of integers (between 1 and number of folds inclusive) indicating which testing set does each sample belong to. |
centered |
If |
Value
A list that contains the following items:
pav |
The estimated Population Average Value. |
sd |
The estimated standard deviation of PAV. |
Author(s)
Michael Lingzhi Li, Technology and Operations Management, Harvard Business School mili@hbs.edu, https://www.michaellz.com/;
References
Imai and Li (2019). “Experimental Evaluation of Individualized Treatment Rules”,
Examples
T = c(1,0,1,0,1,0,1,0)
That = matrix(c(0,1,1,0,0,1,1,0,1,0,0,1,1,0,0,1), nrow = 8, ncol = 2)
Y = c(4,5,0,2,4,1,-4,3)
ind = c(rep(1,4),rep(2,4))
pavlist <- PAVcv(T, That, Y, ind)
pavlist$pav
pavlist$sd