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The metadat
package contains a large collection of
meta-analysis datasets. These datasets are useful for teaching purposes,
illustrating/testing meta-analytic methods, and validating published
analyses.
The current official (i.e., CRAN) release can be installed within R with:
install.packages("metadat")
The development version of the package can be installed with:
install.packages("remotes")
::install_github("wviechtb/metadat") remotes
This builds the package from source based on the current version on GitHub.
A listing of all datasets in the package can be obtained with
help(package=metadat)
. Each dataset is also tagged with one
or multiple concept terms. These concept terms refer to various aspects
of a dataset, such as the field/topic of research, the outcome measure
used for the analysis, the model(s) used for analyzing the data, and the
methods/concepts that can be illustrated with the dataset. The datsearch()
function can be used to search among the existing datasets in the
package based on their concept terms or based on a full-text search of
their corresponding help files.
You can also read the documentation online at https://wviechtb.github.io/metadat/ (where the output from the example analyses corresponding to each dataset is provided).
We welcome contributions of new datasets to the package. For each dataset, there must be a citable reference, ideally in a peer-reviewed journal or publication. The general workflow for contributing a new dataset is as follows:
metadat
package in R in the usual manner
(i.e., install.packages("metadat")
).data-raw
directory. The file should be named
dat.<author><year>.<ext>
, where
<author>
is the last name of the first author of the
publication from which the data come, <year>
is the
publication year, and <ext>
is the file extension
(e.g., .txt
, .csv
).data-raw
directory named dat.<author><year>.r
that reads
in the data, possibly does some data cleaning/processing, and then saves
the dataset to the data
directory (using
save()
), with name
dat.<author><year>.rda
.metadat
package (i.e.,
library(metadat)
), and then run the prep_dat()
function (either set the working directory to the location of the source
package beforehand or use the pkgdir
argument of the
prep_dat()
function to specify the source package
location).man
directory, named
dat.<author><year>.Rd
. Edit the help file,
adding the title and a short description of the dataset in general, a
description of each variable in the dataset, further details on the
dataset (e.g., the field of research, how the data was collected, the
purpose of the dataset or what it was used for, the effect size or
outcome measure used in the analysis, the types of analyses/models that
can be illustrated with the dataset), a reference for the source of the
dataset, one or multiple concept terms, the name and email address of
the contributor of the dataset, and (optionally) example code to
illustrate the analysis of the dataset.dat.<author><year>.<ext>
,
dat.<author><year>.r
,
dat.<author><year>.rda
, and
dat.<author><year>.Rd
files and open up a new
issue at
GitHub, attaching the zip file..txt
or .csv
format,
along with a meta-data file (format doesn’t matter) that includes the
information described above.If you use these data, please cite both the metadat
package (see citation("metadat")
for the reference) and the
original source of the data as given under the help file of a
dataset.
If you think you have found an error in an existing dataset or a bug in the package in general, please go to https://github.com/wviechtb/metadat/issues and open up a new issue.
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.