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Retrofitting Non-diagnostic Reading Comprehension Assessment: Application of the G-DINA Model to a High Stakes Reading Comprehension Test

机译:改造非诊断阅读理解评估:将G-DINA模型应用于高赌注阅读理解测试

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With the advancement of Cognitive Diagnostic Assessment (CDA) and the pertinent statistical models, different domains of large-scale testing and assessment have been examined for the sake of reporting more diagnostic information. Applying the generalized deterministic input, noisy, "and" gate (G-DINA) model, the current study analyzed a high-stakes L2 reading comprehension test as an integral section of the PhD degree's entrance exam in Iran. It aimed at examining the reading comprehension attributes underlying this high stakes test in an attempt to check the capability of CDA models, (in this case G-DINA), in providing diagnostic information for test developers and users. The items' response data were analyzed in R, "GDINA" package, version 1.4.2. With data collected from multiple sources including the current literature on the sub-skills of reading comprehension, test specifications, test-takers' think-aloud verbal protocols, and expert panel's judgments, an initial Q-matrix, including five sub-skills, was developed and then validated. Data analysis, using the validated version of Q-matrix, showed the sub-skill (attribute) prevalence and its difficulty. Code-related sub-skills were the easiest and the most prevalent ones and the connecting/synthesizing sub-skills were the most difficult and the least prevalent ones for the test-takers. Skill mastery profile results verified the relationship among the sub-skills of reading skill and also the prominence of some of these sub-skills over others.
机译:随着认知诊断评估(CDA)和相关统计模型的推进,为了报告更多诊断信息,已经检查了大规模测试和评估的不同域。应用广泛的确定性输入,嘈杂,“和”门(G-DINA)模型,目前的研究分析了一个高赌注L2阅读理解测试,作为伊朗博士学位的入学考试的一个组成部分。它旨在检查这种高赌注测试的读取理解属性,试图检查CDA模型的能力(在这种情况下G-DINA),为测试开发人员和用户提供诊断信息。项目的响应数据在R,“GDINA”包,版本1.4.2中分析。利用从多个来源收集的数据,包括当前文献的读取理解,测试规范,测试 - 大声言语协议以及专家小组的判断,包括五个子技能的初始Q矩阵,是开发然后验证。使用验证版本的Q矩阵的数据分析显示了子技能(属性)普遍存在及其难度。与代码相关的子技能是最简单,最普遍的子技能,而且连接/合成的子技能是测试者最困难的和最不普遍的普遍存在者。技能掌握简介结果验证了阅读技能的子技能之间的关系,以及对他人的一些子技能的突出。

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