Literature DB >> 33197992

Estimation of item parameters and examinees' mastery probability in each domain of the Korean medical licensing examination using deterministic inputs, noisy and gate(DINA) model.

Younyoung Choi1, Dong Gi Seo2.   

Abstract

PURPOSE: Deterministic inputs, noisy and gate (DINA) model is one of the promising statistical means for providing useful diagnostic information about a student' level of achievement. Diagnostics information is core element for improving learning instead of selection. Educators often want to be provided with diagnostic information which how a given examinees did on each content strand, called diagnostic profiles. The purpose of this paper is to classify examinees in different content domains using the DINA model.
METHODS: This paper analyzed data from the Korean medical licensing examination (KMLE) with 360 items and 3259 examinees. The application study estimate examinees parameters as well as item characteristics. The guessing and slipping parameters of each item were estimated. DINA model was conducted as a statistical analysis.
RESULTS: The output table shows the examples of some items, which can be used for the check of item quality. In addition, the probabilities of being mastery at each content domain were estimated, which indicates the mastery profile of each examinee. Classifications accuracy for 8 contents ranged from .849 to .972 and classification consistency for 8 contents ranged from .839 to .994. As a result, classification reliability in a CDM was very high for 8 contents in KMLE.
CONCLUSION: This mastery profile can be useful diagnostic information for each examinee in terms of the content domains of KMLE. The master profile from KMLE provides each examinee's mastery profile in terms of each content domain. The individual mastery profile allows educators and examinees to understand that which domain(s) should be improved for mastering all domains in KMLE. In addition, the results found that all items are reasonable level with respect to item parameters character.

Entities:  

Keywords:  Classification and Learning; DINA model; Diagnostics Classification Model; Large-scale Assessment

Year:  2020        PMID: 33197992      PMCID: PMC7854565          DOI: 10.3352/jeehp.2020.17.35

Source DB:  PubMed          Journal:  J Educ Eval Health Prof        ISSN: 1975-5937


  2 in total

1.  Reporting Subscore Profiles Using Diagnostic Classification Models in Health Professions Education.

Authors:  Yoon Soo Park; Amy Morales; Linette Ross; Miguel Paniagua
Journal:  Eval Health Prof       Date:  2019-08-28       Impact factor: 2.651

2.  Usefulness of the DETECT program for assessing the internal structure of dimensionality in simulated data and results of the Korean nursing licensing examination.

Authors:  Dong Gi Seo; Younyoung Choi; Sun Huh
Journal:  J Educ Eval Health Prof       Date:  2017-12-27
  2 in total

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