gender 0.6.0
- Fixes installation problems with the move away from rOpenSci
- Removes the
gender_df()
function, which did not work properly.
gender 0.5.4
- update dependencies, and fix for dplyr 1.0.0
- update URL for rOpenSci CRAN-like repository
gender 0.5.3
- improvements to documentation
- improvements to testing when genderdata is available
gender 0.5.2
- bugfix for change in the genderize.io API (#50)
gender 0.5.1
- bugfix for some users who cannot install the
genderdata
package as binary
gender 0.5.0
- genderdata package is installed using
install.packages()
from the rOpenSci package repository instead of using install_github()
.
- all functions always return data frames
- general performance improvements
- calls to Genderize.io API no longer fail if the name does not exist
- new function
gender_df()
efficiently applies gender()
to data frames
- add North Atlantic Population Project dataset for six European countries
gender 0.4.3
- updates to README.md as requested by CRAN
gender 0.4.2
- bugfix: Kantrowitz method is now case-insensitive
- updates to title and descriptions according to CRAN policy
gender 0.4.1
- tests and vignettes run without depending on the genderdata package
- users will be prompted to install the genderdata package from GitHub the first time that it is necessary
- added a demo mode with a minimal dataset
gender 0.4
- data is now external to the gender package and is available in the genderdata package.
- genderdata package can be installed with a new function
gender 0.3
- rewrote all functions to take only character vectors, not data frames, but provided instructions on how to use with data frames
- wrote a vignette describing the data sources and explaining the historical methodology behind this package
gender 0.2
- implemented an
ipums
method that predicts gender before 1930 using U.S. Census data from IPUMS (contributed by Benjamin Schmidt).
- upgraded dependency on
dplyr
to 0.2.
gender 0.1
- function
gender
implements gender lookup for names and data frames
- implemented finding gender by using the Kantrowitz names corpus
- implemented finding gender by using the national Social Security Administration data for names and dates of birth