RATest - Randomization Tests
A collection of randomization tests, data sets and
examples. The current version focuses on three testing problems
and their implementation in empirical work. First, it
facilitates the empirical researcher to test for particular
hypotheses, such as comparisons of means, medians, and
variances from k populations using robust permutation tests,
which asymptotic validity holds under very weak assumptions,
while retaining the exact rejection probability in finite
samples when the underlying distributions are identical.
Second, the description and implementation of a permutation
test for testing the continuity assumption of the baseline
covariates in the sharp regression discontinuity design (RDD)
as in Canay and Kamat (2017) <https://goo.gl/UZFqt7>. More
specifically, it allows the user to select a set of covariates
and test the aforementioned hypothesis using a permutation test
based on the Cramer-von Miss test statistic. Graphical
inspection of the empirical CDF and histograms for the
variables of interest is also supported in the package. Third,
it provides the practitioner with an effortless implementation
of a permutation test based on the martingale decomposition of
the empirical process for the goodness-of-fit testing problem
with an estimated nuisance parameter. An application of this
testing problem is the one of testing for heterogeneous
treatment effects in a randomized control trial.