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rigr
:
Regression, Inference, and General Data Analysis Tools for Rrigr
is an R
package to streamline data
analysis in R
. Learning both R
and
introductory statistics at the same time can be challenging, and so we
created rigr
to facilitate common data analysis tasks and
enable learners to focus on statistical concepts.
rigr
, formerly known as uwIntroStats
,
provides easy-to-use interfaces for descriptive statistics, one- and
two-sample inference, and regression analyses. rigr
output
includes key information while omitting unnecessary details that can be
confusing to beginners. Heteroskedasticity-robust (“sandwich”) standard
errors are returned by default, and multiple partial F-tests and tests
for contrasts are easy to specify. A single regression function
(regress()
) can fit both linear models, generalized linear
models, and proportional hazards models, allowing students to more
easily make connections between different classes of models.
You can install the stable release of rigr
from CRAN as
follows:
install.packages("rigr")
You can install the development version of rigr
from
GitHub using the code below.
remotes::install_github("statdivlab/rigr")
If this produces an error, please run
install.packages("remotes")
first then try the above line
again.
rigr
is maintained by the StatDivLab, but relies on
community support to log issues and implement new features. Is there a
method you would like to have implemented? Please submit a pull request
or start a discussion!
Examples of how to use the main functions in rigr
are
provided in three vignettes. One details the regress
function and its utilities, one details the descrip
function for descriptive statistics, and the third details functions
used for one- and two-sample inference, including ttest
,
wilcoxon
, and proptest
.
Maintainer: Amy Willis
Authors: Scott S Emerson, Brian D Williamson, Charles Wolock, Taylor Okonek, Yiqun T Chen, Jim Hughes, Amy Willis, Andrew J Spieker and Travis Y Hee Wai.
If you encounter any bugs, please file an issue. Better yet, submit a pull request!
Do you have a question? Please first check out the vignettes, then please post on the Discussions.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
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