Relating the One-Parameter Logistic Diagnostic Classification Model to the Rasch Model and One-Parameter Logistic Mixed, Partial, and Probabilistic Membership Diagnostic Classification Models

Alexander Robitzsch
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Abstract

Diagnostic classification models (DCMs) are statistical models with discrete latent variables (so-called skills) to analyze multiple binary variables (i.e., items). The one-parameter logistic diagnostic classification model (1PLDCM) is a DCM with one skill and shares desirable measurement properties with the Rasch model. This article shows that the 1PLDCM is indeed a latent class Rasch model. Furthermore, the relationship of the 1PLDCM to extensions of the DCM to mixed, partial, and probabilistic memberships is treated. It is argued that the partial and probabilistic membership models are also equivalent to the Rasch model. The fit of the different models was empirically investigated using six datasets. It turned out for these datasets that the 1PLDCM always had a worse fit than the Rasch model and mixed and partial membership extensions of the DCM.
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将单参数Logistic诊断分类模型与Rasch模型和单参数Logistic混合、部分和概率隶属诊断分类模型联系起来
诊断分类模型(dcm)是具有离散潜在变量(所谓的技能)的统计模型,用于分析多个二元变量(即项目)。单参数逻辑诊断分类模型(1PLDCM)是一种与Rasch模型具有相同测量特性的单技能逻辑诊断分类模型。本文表明1PLDCM确实是一个潜在类Rasch模型。此外,还讨论了1PLDCM与DCM扩展到混合隶属关系、部分隶属关系和概率隶属关系的关系。认为部分隶属度模型和概率隶属度模型也等价于Rasch模型。利用6个数据集对不同模型的拟合进行了实证研究。结果表明,对于这些数据集,1PLDCM总是比Rasch模型和DCM的混合和部分成员扩展具有更差的拟合。
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