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Consistency of Cluster Analysis for CognitiveDiagnosis

机译:认知的聚类分析的一致性诊断

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摘要

The Asymptotic Classification Theory of Cognitive Diagnosis (ACTCD) developed by Chiu, Douglas, and Li proved that for educational test data conforming to the Deterministic Input Noisy Output “AND” gate (DINA) model, the probability that hierarchical agglomerative cluster analysis (HACA) assigns examinees to their true proficiency classes approaches 1 as the number of test items increases. This article proves that the ACTCD also covers test data conforming to the Deterministic Input Noisy Output “OR” gate (DINO) model. It also demonstrates that an extension to the statistical framework of the ACTCD, originally developed for test data conforming to the Reduced Reparameterized Unified Model or the General Diagnostic Model (a) is valid also for both the DINA model and the DINO model and (b) substantially increases the accuracy of HACA in classifying examinees when the test data conform to either of these two models.
机译:Chiu,Douglas和Li提出的认知诊断的渐近分类理论(ACTCD)证明,对于符合确定性输入噪声输出“ AND”门(DINA)模型的教育测试数据,采用分层聚集聚类分析(HACA)的可能性随着测试项目数量的增加,将考生分配给其真实水平等级的方法接近1。本文证明ACTCD还涵盖符合确定性输入噪声输出“或”门(DINO)模型的测试数据。它还表明,对ACTCD统计框架的扩展,最初是针对符合简化的重新参数化统一模型或通用诊断模型的测试数据而开发的(a)对DINA模型和DINO模型均有效,并且(b)当测试数据符合这两个模型中的任何一个时,大大提高了HACA在对考生分类中的准确性。

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