rbtt - Alternative Bootstrap-Based t-Test Aiming to Reduce Type-I Error
for Non-Negative, Zero-Inflated Data
Tu & Zhou (1999)
<doi:10.1002/(SICI)1097-0258(19991030)18:20%3C2749::AID-SIM195%3E3.0.CO;2-C>
showed that comparing the means of populations whose
data-generating distributions are non-negative with excess zero
observations is a problem of great importance in the analysis
of medical cost data. In the same study, Tu & Zhou discuss that
it can be difficult to control type-I error rates of
general-purpose statistical tests for comparing the means of
these particular data sets. This package allows users to
perform a modified bootstrap-based t-test that aims to better
control type-I error rates in these situations.