hdm - High-Dimensional Metrics
Implementation of selected high-dimensional statistical
and econometric methods for estimation and inference. Efficient
estimators and uniformly valid confidence intervals for various
low-dimensional causal/ structural parameters are provided
which appear in high-dimensional approximately sparse models.
Including functions for fitting heteroscedastic robust Lasso
regressions with non-Gaussian errors and for instrumental
variable (IV) and treatment effect estimation in a
high-dimensional setting. Moreover, the methods enable valid
post-selection inference and rely on a theoretically grounded,
data-driven choice of the penalty. Chernozhukov, Hansen,
Spindler (2016) <arXiv:1603.01700>.