Post-hoc simulation study of computerized adaptive testing for the Korean Medical Licensing Examination
Author(s) -
Dong Gi Seo,
JeongWook Choi
Publication year - 2018
Publication title -
journal of educational evaluation for health professions
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.397
H-Index - 9
ISSN - 1975-5937
DOI - 10.3352/jeehp.2018.15.14
Subject(s) - rasch model , computer science , computerized adaptive testing , parametric statistics , selection (genetic algorithm) , maximum a posteriori estimation , modal , variance (accounting) , statistics , machine learning , artificial intelligence , data mining , maximum likelihood , mathematics , psychometrics , chemistry , accounting , polymer chemistry , business
Purpose Computerized adaptive testing (CAT) has been adopted in licensing examinations because it improves the efficiency and accuracy of the tests, as shown in many studies. This simulation study investigated CAT scoring and item selection methods for the Korean Medical Licensing Examination (KMLE). Methods This study used a post-hoc (real data) simulation design. The item bank used in this study included all items from the January 2017 KMLE. All CAT algorithms for this study were implemented using the ‘catR’ package in the R program. Results In terms of accuracy, the Rasch and 2-parametric logistic (PL) models performed better than the 3PL model. The ‘modal a posteriori’ and ‘expected a posterior’ methods provided more accurate estimates than maximum likelihood estimation or weighted likelihood estimation. Furthermore, maximum posterior weighted information and minimum expected posterior variance performed better than other item selection methods. In terms of efficiency, the Rasch model is recommended to reduce test length. Conclusion Before implementing live CAT, a simulation study should be performed under varied test conditions. Based on a simulation study, and based on the results, specific scoring and item selection methods should be predetermined.
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