hdcate:Estimation of Conditional Average Treatment Effects with
High-Dimensional Data
A two-step double-robust method to estimate the conditional average treatment effects (CATE) with potentially
high-dimensional covariate(s). In the first stage, the nuisance
functions necessary for identifying CATE are estimated by
machine learning methods, allowing the number of covariates to
be comparable to or larger than the sample size. The second
stage consists of a low-dimensional local linear regression,
reducing CATE to a function of the covariate(s) of interest.
The CATE estimator implemented in this package not only allows
for high-dimensional data, but also has the “double robustness”
property: either the model for the propensity score or the
models for the conditional means of the potential outcomes are
allowed to be misspecified (but not both). This package is
based on the paper by Fan et al., "Estimation of Conditional
Average Treatment Effects With High-Dimensional Data" (2022),
Journal of Business & Economic Statistics
<doi:10.1080/07350015.2020.1811102>.