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  5. HBMIRT: A SAS macro for estimating uni- and multidimensional 1- and 2-parameter item response models in small (and large!) samples

HBMIRT: A SAS macro for estimating uni- and multidimensional 1- and 2-parameter item response models in small (and large!) samples

Publication date
2024-03-22
Document type
Forschungsartikel
Author
Wagner, Wolfgang
Zitzmann, Steffen
Hecht, Martin  
Organisational unit
Psychologische Methodenlehre  
DOI
10.3758/s13428-024-02366-8
URI
https://openhsu.ub.hsu-hh.de/handle/10.24405/20721
Publisher
Springer
Series or journal
Behavior Research Methods
ISSN
1554-3528
Periodical volume
56
First page
4130
Last page
4161
Peer-reviewed
✅
Part of the university bibliography
✅
Additional Information
Language
English
Abstract
Item response theory (IRT) has evolved as a standard psychometric approach in recent years, in particular for test construction based on dichotomous (i.e., true/false) items. Unfortunately, large samples are typically needed for item refinement in unidimensional models and even more so in the multidimensional case. However, Bayesian IRT approaches with hierarchical priors have recently been shown to be promising for estimating even complex models in small samples. Still, it may be challenging for applied researchers to set up such IRT models in general purpose or specialized statistical computer programs. Therefore, we developed a user-friendly tool – a SAS macro called HBMIRT – that allows to estimate uni- and multidimensional IRT models with dichotomous items. We explain the capabilities and features of the macro and demonstrate the particular advantages of the implemented hierarchical priors in rather small samples over weakly informative priors and traditional maximum likelihood estimation with the help of a simulation study. The macro can also be used with the online version of SAS OnDemand for Academics that is freely accessible for academic researchers.
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Published version
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