Semi-automated Rasch analysis with differential item functioning

被引:0
|
作者
Feri Wijayanto
Ioan Gabriel Bucur
Karlien Mul
Perry Groot
Baziel G.M. van Engelen
Tom Heskes
机构
[1] Radboud University Nijmegen,Institute for Computing and Information Sciences
[2] Universitas Islam Indonesia,Department of Informatics
[3] Department of Neurology,undefined
[4] Donders Institute for Brain,undefined
[5] Cognition,undefined
[6] and Behaviour,undefined
来源
Behavior Research Methods | 2023年 / 55卷
关键词
Semi-automated Rasch analysis; Rasch model; Generalized partial credit model; Penalized JMLE; GPCMlasso; GPCM-DIF; Differential item functioning; DIF detection;
D O I
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学科分类号
摘要
Rasch analysis is a procedure to develop and validate instruments that aim to measure a person’s traits. However, manual Rasch analysis is a complex and time-consuming task, even more so when the possibility of differential item functioning (DIF) is taken into consideration. Furthermore, manual Rasch analysis by construction relies on a modeler’s subjective choices. As an alternative approach, we introduce a semi-automated procedure that is based on the optimization of a new criterion, called in-plus-out-of-questionnaire log likelihood with differential item functioning (IPOQ-LL-DIF), which extends our previous criterion. We illustrate our procedure on artificially generated data as well as on several real-world datasets containing potential DIF items. On these real-world datasets, our procedure found instruments with similar clinimetric properties as those suggested by experts through manual analyses.
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页码:3129 / 3148
页数:19
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