This package is in development. Improved documentation and examples coming soon.
For questions, bugs, or feature additions, feel free to contact me at 'lvdlaan@uw.edu'!
The hte3
package equips users with tools for supervised causal machine learning of heterogeneous treatment effects, leveraging the sl3
package.
-
Customizable Meta-learners of HTEs: Any supervised machine learning algorithm supported by the
sl3
package can be turned into a meta-learner for heterogeneous treatment effects, including the DR-learner, R-learner, T-learner, and EP-learner of the CATE. For details on the usage of thesl3
R package, we refer tohttps://github.com/tlverse/sl3
. -
Novel Meta-learners of the CRR: Implements novel EP-learners of the log conditional relative risk (CRR).
For comprehensive information, consult the package documentation.
To install the hte3
package, use the following command:
if(!require(devtools)) {
install.packages("devtools")
}
devtools::install_github("Larsvanderlaan/hte3")