Conduct penalized meta-analysis (“pema”) In meta-analysis, there are often between-study differences. These can be coded as moderator variables, and controlled for using meta-regression. However, if the number of moderators is large relative to the number of studies, such an analysis may be overfitted. Penalized meta-regression is useful in these cases, because it shrinks the regression slopes of irrelevant moderators towards zero.
For most users, the recommended starting point is to read the paper published in Research Synthesis Methods, which introduces the method, validates it, and provides a tutorial example.
Use CRAN to install the
latest release of pema
:
install.packages("pema")
Alternatively, use R-universe to
install the development version of pema
by running the following code:
options(repos = c(
cjvanlissa = 'https://cjvanlissa.r-universe.dev',
CRAN = 'https://cloud.r-project.org'))
install.packages('pema')
You can cite pema
using the following citation (please use the same
citation for either the package, or the paper):
Van Lissa, C. J., van Erp, S., & Clapper, E. B. (2023). Selecting relevant moderators with Bayesian regularized meta-regression. Research Synthesis Methods. https://doi.org/10.31234/osf.io/6phs5
This repository contains the source code for the R-package called
pema
.
We are always eager to receive user feedback and contributions to help us improve both the workflow and the software. Major contributions warrant coauthorship to the package. Please contact the lead author at c.j.vanlissa@uu.nl, or:
By participating in this project, you agree to abide by the Contributor
Code of Conduct v2.0.
Contributions to the package must adhere to the tidyverse style
guide. When contributing code, please add
tests for that contribution to the tests/testthat
folder, and ensure
that these tests pass in the GitHub Actions
panel.
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