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Application of Binary Searching for Item Exposure Control inCognitive Diagnostic Computerized Adaptive Testing

机译:二元搜索在项目暴露控制中的应用。认知诊断计算机化自适应测试

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摘要

Cognitive diagnosis has emerged as a new generation of testing theory for educational assessment after the item response theory (IRT). One distinct feature of cognitive diagnostic models (CDMs) is that they assume the latent trait to be discrete instead of continuous as in IRT. From this perspective, cognitive diagnosis bears a close resemblance to searching problems in computer science and, similarly, item selection problem in cognitive diagnostic computerized adaptive testing (CD-CAT) can be considered as a dynamic searching problem. Previously, item selection algorithms in CD-CAT were developed from information indices in information science and attempted to achieve a balance among several objectives by assigning different weights. As a result, they suffered from low efficiency from a tug-of-war competition among multiple goals in item selection and, at the same time, put an undue responsibility of assigning the weights for these goals by trial and error on users. Based on the searching problem perspective on CD-CAT, this article adapts the binary searching algorithm, one of the most well-known searching algorithms in searching problems, to item selection in CD-CAT. The two new methods, the stratified dynamic binary searching (SDBS) algorithm for fixed-length CD-CAT andthe dynamic binary searching (DBS) algorithm for variable-length CD-CAT, canachieve multiple goals without any of the aforementioned issues. The simulationstudies indicate their performances are comparable or superior to the previousmethods.
机译:认知诊断已成为继项目反应理论(IRT)之后的新一代用于教育评估的测试理论。认知诊断模型(CDM)的一项独特功能是,它们假定潜在特征是离散的,而不是像IRT那样是连续的。从这个角度来看,认知诊断与计算机科学中的搜索问题非常相似,并且类似地,认知诊断计算机自适应测试(CD-CAT)中的项目选择问题也可以视为动态搜索问题。以前,CD-CAT中的项目选择算法是根据信息科学中的信息索引开发的,并试图通过分配不同的权重来实现多个目标之间的平衡。结果,他们在项目选择中的多个目标之间进行拔河比赛而效率低下,并且同时承担了通过反复试验为用户分配这些目标权重的不适当责任。基于对CD-CAT的搜索问题的观点,本文将二进制搜索算法(CD-CAT中的最著名搜索算法之一)应用于CD-CAT中的项目选择。两种新方法,用于定长CD-CAT的分层动态二进制搜索(SDBS)算法和可变长度CD-CAT的动态二进制搜索(DBS)算法,可以在没有上述任何问题的情况下实现多个目标。模拟研究表明,他们的表现与以前的表现相当或优于方法。

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