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GPCMlasso (version 0.1-7)

Differential Item Functioning in Generalized Partial Credit Models

Description

Provides a framework to detect Differential Item Functioning (DIF) in Generalized Partial Credit Models (GPCM) and special cases of the GPCM as proposed by Schauberger and Mair (2019) . A joint model is set up where DIF is explicitly parametrized and penalized likelihood estimation is used for parameter selection. The big advantage of the method called GPCMlasso is that several variables can be treated simultaneously and that both continuous and categorical variables can be used to detect DIF.

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Version

Install

install.packages('GPCMlasso')

Monthly Downloads

243

Version

0.1-7

License

GPL (>= 2)

Maintainer

Gunther Schauberger

Last Published

January 23rd, 2024

Functions in GPCMlasso (0.1-7)

plot.GPCMlasso

Plot function for GPCMlasso
print.GPCMlasso

Print function for GPCMlasso
predict.GPCMlasso

Predict function for GPCMlasso
tenseness_small

Subset of tenseness data from the Freiburg Complaint Checklist
ctrl_GPCMlasso

Control function for GPCMlasso
GPCMlasso-package

Find DIF in Generalized Partial Credit Models
GPCMlasso

GPCMlasso
tenseness

Tenseness data from the Freiburg Complaint Checklist
trait.posterior

Calculate Posterior Estimates for Trait Parameters