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Statistical Analysis of Q-Matrix Based Diagnostic Classification Models

机译:基于Q矩阵的诊断分类模型的统计分析

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摘要

Diagnostic classification models (DMCs) have recently gained prominence in educational assessment, psychiatric evaluation, and many other disciplines. Central to the model specification is the so-called Q-matrix that provides a qualitative specification of the item-attribute relationship. In this article, we develop theories on the identifiability for the Q-matrix under the DINA and the DINO models. We further propose an estimation procedure for the Q-matrix through the regularized maximum likelihood. The applicability of this procedure is not limited to the DINA or the DINO model and it can be applied to essentially all Q-matrix based DMCs. Simulation studies show that the proposed method admits high probability recovering the true Q-matrix. Furthermore, two case studies are presented. The first case is a dataset on fraction subtraction (educational application) and the second case is a subsample of the National Epidemiological Survey on Alcohol and Related Conditions concerning the social anxiety disorder (psychiatric application).
机译:诊断分类模型(DMC)最近在教育评估,精神病学评估和许多其他学科中倍受关注。模型规范的中心是所谓的Q矩阵,它提供了项-属性关系的定性规范。在本文中,我们开发了有关DINA和DINO模型下Q矩阵可识别性的理论。我们进一步提出了通过规则化的最大似然估计Q矩阵的程序。此过程的适用性不限于DINA或DINO模型,它可以应用于基本上所有基于Q矩阵的DMC。仿真研究表明,该方法具有很高的恢复真实Q矩阵的可能性。此外,提出了两个案例研究。第一种情况是分数减法的数据集(教育应用),第二种情况是关于社交焦虑症的全国酒精及相关疾病流行病学调查的子样本(精神病学应用)。

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