RDHonest 1.0.1
Minor improvements and fixes
- Use covariate-adjusted outcome to compute nearest-neighbor variance
estimator
- Drop collinear covariates automatically instead of throwing an
error
RDHonest 1.0.0
New Features
- The function
RDHonest
computes estimates and confidence
intervals for the regression discontinuity (RD) parameter in sharp and
fuzzy designs. It supports covariates, clustering, and weighting.
Confidence intervals are honest (or bias-aware), with critical values
computed using the CVb
function. Worst-case bias of the
estimator is computed under either the Taylor or Hölder smoothness
class.
RDHonestBME
computes confidence intervals in sharp RD
designs with discrete covariates under the assumption assumption that
the conditional mean lies in the “bounded misspecification error” class
of functions, as considered in Kolesár and Rothe
(2018).
- Support for plotting the data is provided by the function
RDScatter
- The function
RDSmoothnessBound
computes a lower bound
on the smoothness constant M
, used as a parameter by
RDHonest
to calculate the worst-case bias of the
estimator
- The function
RDTEfficiencyBound
calculates efficiency
of minimax one-sided CIs at constant functions, or efficiency of
two-sided fixed-length CIs at constant functions under second-order
Taylor smoothness class.