混合IRT模型中尺度识别方法的比较

Youn-Jeng Choi, A. Cohen
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引用次数: 2

摘要

研究了混合IRT模型中三个尺度识别约束的影响。一项模拟研究发现,混合Rasch和混合2PL模型没有约束效应,但项目锚定约束是唯一一个能很好地用混合3PL模型选择正确模型的约束。
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Comparison of Scale Identification Methods in Mixture IRT Models
The effects of three scale identification constraints in mixture IRT models were studied. A simulation study found no constraint effect on the mixture Rasch and mixture 2PL models, but the item anchoring constraint was the only one that worked well on selecting correct model with the mixture 3PL model.
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来源期刊
CiteScore
0.50
自引率
0.00%
发文量
5
期刊介绍: The Journal of Modern Applied Statistical Methods is an independent, peer-reviewed, open access journal designed to provide an outlet for the scholarly works of applied nonparametric or parametric statisticians, data analysts, researchers, classical or modern psychometricians, and quantitative or qualitative methodologists/evaluators.
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