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DIF and DDF Detection by Non-Linear Regression Models.
The difNLR
package provides methods for detecting
differential item functioning (DIF) using non-linear regression models.
Both uniform and non-uniform DIF effects can be detected when
considering a single focal group. Additionally, the method allows for
testing differences in guessing or inattention parameters between the
reference and focal group. DIF detection is performed using either a
likelihood-ratio test, an F-test, or Wald’s test of a submodel. The
software offers a variety of algorithms for estimating item
parameters.
Furthermore, the difNLR
package includes methods for
detecting differential distractor functioning (DDF) using multinomial
log-linear regression model. It also introduces DIF detection approaches
for ordinal data via adjacent category logit and cumulative logit
regression models.
The easiest way to get difNLR
package is to install it
from CRAN:
install.packages("difNLR")
Or you can get the newest development version from GitHub:
# install.packages("devtools")
devtools::install_github("adelahladka/difNLR")
Current version on CRAN is 1.5.1-1. The newest development version available on GitHub is 1.5.1-1.
To cite difNLR
package in publications, please, use:
To cite new estimation approaches provided in the
difNLR()
function, please, use:
You can try some functionalities of the difNLR
package
online using ShinyItemAnalysis
application and package and its DIF/Fairness section.
In case you find any bug or just need help with the
difNLR
package, you can leave your message as an issue here
or directly contact us at hladka@cs.cas.cz
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.
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