2021
DOI: 10.22257/kjp.2021.12.40.4.539
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Investigating the Viability of Alternating Model Tree As An Item Selection Algorithm for Constructing Computerized Adaptive Psychological Testing

Abstract: Computerized adaptive testing (CAT) is a computer-administered test where the next question for estimating the examinee's trait level is selected depending on his or her reponses to the previous items, resulting in tailored testing for each individual examinee. A defining feature of CAT stems from its item selection algorithms, among which both research interest and practical applications of decision-tree based CAT (DT-based CAT) have been rising recently. In the field of machine learning, however, it is well … Show more

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