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Q-Matrix Designs of Longitudinal Diagnostic Classification Models With Hierarchical Attributes for Formative Assessment

机译:Q矩阵纵向诊断分类模型设计具有层次属性的形成性评估

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Longitudinal diagnostic classification models (DCMs) with hierarchical attributes can characterize learning trajectories in terms of the transition between attribute profiles for formative assessment. A longitudinal DCM for hierarchical attributes was proposed by imposing model constraints on the transition DCM. To facilitate the applications of longitudinal DCMs, this paper explored the critical topic of the Q-matrix design with a simulation study. The results suggest that including the transpose of the R-matrix in the Q-matrix improved the classification accuracy. Moreover, 10-item tests measuring three linear attributes across three time points provided satisfactory classification accuracy for low-stakes assessment; lower classification rates were observed with independent or divergent attributes. Q-matrix design recommendations were provided for the short-test situation. Implications and future directions were discussed.
机译:具有分层属性的纵向诊断分类模型(DCMS)可以在形成性评估属性配置文件之间的转换方面表征学习轨迹。 通过对转换DCM施加模型约束来提出用于分层属性的纵向DCM。 为了促进纵向DCMS的应用,本文探讨了Q矩阵设计的临界主题,具有模拟研究。 结果表明,在Q矩阵中包括r-矩阵的转置提高了分类精度。 此外,在三个时间点中测量三个线性属性的10项测试为低赌注评估提供了令人满意的分类精度; 使用独立或不同的属性观察较低的分类速率。 Q-Matrix设计建议是为了短期测试情况。 讨论了含义和未来的指示。

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