Improving reliability estimation in cognitive diagnosis modeling

被引:0
作者
Rodrigo Schames Kreitchmann
Jimmy de la Torre
Miguel A. Sorrel
Pablo Nájera
Francisco J. Abad
机构
[1] Universidad Autónoma de Madrid,Department of Social Psychology and Methodology, Faculty of Psychology
[2] IE University,School of Science and Technology
[3] The University of Hong Kong,Faculty of Education
来源
Behavior Research Methods | 2023年 / 55卷
关键词
Cognitive diagnosis; Diagnostic classification; Reliability; Classification accuracy; Multiple imputation;
D O I
暂无
中图分类号
学科分类号
摘要
Cognitive diagnosis models (CDMs) are used in educational, clinical, or personnel selection settings to classify respondents with respect to discrete attributes, identifying strengths and needs, and thus allowing to provide tailored training/treatment. As in any assessment, an accurate reliability estimation is crucial for valid score interpretations. In this sense, most CDM reliability indices are based on the posterior probabilities of the estimated attribute profiles. These posteriors are traditionally computed using point estimates for the model parameters as approximations to their populational values. If the uncertainty around these parameters is unaccounted for, the posteriors may be overly peaked, deriving into overestimated reliabilities. This article presents a multiple imputation (MI) procedure to integrate out the model parameters in the estimation of the posterior distributions, thus correcting the reliability estimation. A simulation study was conducted to compare the MI procedure with the traditional reliability estimation. Five factors were manipulated: the attribute structure, the CDM model (DINA and G-DINA), test length, sample size, and item quality. Additionally, an illustration using the Examination for the Certificate of Proficiency in English data was analyzed. The effect of sample size was studied by sampling subsets of subjects from the complete data. In both studies, the traditional reliability estimation systematically provided overestimated reliabilities, whereas the MI procedure offered more accurate results. Accordingly, practitioners in small educational or clinical settings should be aware that the reliability estimation using model parameter point estimates may be positively biased. R codes for the MI procedure are made available
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页码:3446 / 3460
页数:14
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