
RESI is an R package designed to implement the Robust Effect Size Index
(RESI, denoted as S) described in Vandekar, Tao, & Blume (2020). The
RESI is a versatile effect size measure that can be easily computed and
added to common reports (such as summary and ANOVA tables). This package
currently supports lm, glm, nls,
survreg, coxph, hurdle,
zeroinfl, gee, geeglm,
lme, and lmerMod models. Nonparametric
bootstrapping is used to compute confidence intervals, although the
interval performance has not yet been evaluated for the longitudinal
models. A Bayesian bootstrap is also available for lm and
nls models. In addition to the main resi
function, the package also includes a point-estimate-only function
(resi_pe), conversions from S to other common effect size
measures and vice versa, print methods, plot methods, summary methods,
and Anova/anova methods. A more detailed vignette is being written.
If you would like to contribute to the package, please branch off of our GitHub and submit a pull request describing the contribution. Please use the GitHub Issues page to report any problems and the Discussions page to seek additional support.
Jones, M., Kang, K., & Vandekar, S. (2023). RESI: An R Package for Robust Effect Sizes. arXiv preprint arXiv:2302.12345.
Kang, K., Jones, M. T., Armstrong, K., Avery, S., McHugo, M., Heckers, S., & Vandekar, S. Accurate Confidence and Bayesian Interval Estimation for Non-centrality Parameters and Effect Size Indices. Psychometrika. 2023. 10.1007/s11336-022-09899-x. Advance online publication. https://doi.org/10.1007/s11336-022-09899-x.
Vandekar S, Tao R, Blume J. A Robust Effect Size Index. Psychometrika. 2020 Mar;85(1):232-246. doi: 10.1007/s11336-020-09698-2.
Any scripts or data that you put into this service are public.
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.