基于IRT的学生能力评估

H. Binh, Bui The Duy
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引用次数: 3

摘要

大多数的评估系统现在使用的是经典测试理论(CTT),学生的真实能力并没有被准确地揭示出来,因为他们只依赖于计算真实答案的数量,而没有意识到其他特征,比如每个项目的难度。一些测试软件应用了加权问题,但它们取决于教师的情绪。目前的现代测试理论都是建立在一个能够计算出学生潜在特质的数学模型之上的。Rasch模型是一个概率模型,它促进了项目与学生之间的互动。基于项目反应理论(IRT),运用K-Means对学生排名进行分类,构建了一个学生能力评估系统。在本文中,我们提出了一个模型来分类学生的水平,并将其与传统的评估方法进行比较。结果表明,本文提出的方法取得了显著的进步,可以有效地应用于其他教学系统。该结果对于定制内容和测试方法也很有意义。此外,该研究为教师或考试制定者提供了一个指导方针,可以为各种考试提供其他测试方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Student ability estimation based on IRT
Most of the assessment systems are now using the Classical Test Theory (CTT), the real ability of students is not exactly revealed because they rely only on counting the number of true responses without awaring other characteristics like the difficulty of each item. Several testing software are applied weighted questions but they depend on the sentiment of teachers. The modern testing theories nowadays are built on a mathematical model which can calculate the latent trait of students. The Rasch model is the probability model which promotes interaction between an item and a student. We have constructed a system to estimate students' ability basing on Item Response Theory (IRT) and applying K-Means to classify student ranking. In this paper we present a model to categorize students' levels and compare them to traditional assessment methods. The results indicate that the methods we proposed have shown some significant improvement and they could be effectively applied for other tutoring systems. The result is also meaningful in customizing content and testing ways. Beside, the research is a guide line for teachers or test makers to give other testing approaches for various examinations.
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