dat.bornmann2007 {metadat} | R Documentation |
Studies on Gender Differences in Grant and Fellowship Awards
Description
Results from 21 studies on gender differences in grant and fellowship awards.
Usage
dat.bornmann2007
Format
The data frame contains the following columns:
study | character | study reference |
obs | numeric | observation within study |
doctype | character | document type |
gender | character | gender of the study authors |
year | numeric | (average) cohort year |
org | character | funding organization / program |
country | character | country of the funding organization / program |
type | character | fellowship or grant application |
discipline | character | discipline / field |
waward | numeric | number of women who received a grant/fellowship award |
wtotal | numeric | number of women who applied for an award |
maward | numeric | number of men who received a grant/fellowship award |
mtotal | numeric | number of men who applied for an award |
Details
The studies in this dataset examine whether the chances of receiving a grant or fellowship award differs for men and women. Note that many studies provide multiple comparisons (e.g., for different years / cohorts / disciplines). A multilevel meta-analysis model can be used to account for the multilevel structure in these data.
Concepts
sociology, odds ratios, multilevel models
Author(s)
Wolfgang Viechtbauer, wvb@metafor-project.org, https://www.metafor-project.org
Source
Bornmann, L., Mutz, R., & Daniel, H. (2007). Gender differences in grant peer review: A meta-analysis. Journal of Informetrics, 1(3), 226–238. https://doi.org/10.1016/j.joi.2007.03.001
References
Marsh, H. W., Bornmann, L., Mutz, R., Daniel, H.-D., & O'Mara, A. (2009). Gender effects in the peer reviews of grant proposals: A comprehensive meta-analysis comparing traditional and multilevel approaches. Review of Educational Research, 79(3), 1290–1326. https://doi.org/10.3102/0034654309334143
Examples
### copy data into 'dat' and examine data
dat <- dat.bornmann2007
head(dat, 16)
## Not run:
### load metafor package
library(metafor)
### calculate log odds ratios and corresponding sampling variances
dat <- escalc(measure="OR", ai=waward, n1i=wtotal, ci=maward, n2i=mtotal, data=dat)
### fit multilevel meta-analysis model
res <- rma.mv(yi, vi, random = ~ 1 | study/obs, data=dat)
res
### estimated average odds ratio (with 95% CI/PI)
predict(res, transf=exp, digits=2)
### test for a difference between fellowship and grant applications
res <- rma.mv(yi, vi, mods = ~ type, random = ~ 1 | study/obs, data=dat)
res
predict(res, newmods=0:1, transf=exp, digits=2)
## End(Not run)