Adaptive fuzzy ontology for student assessment

Chang-Shing Lee, Mei-Hui Wang, I-Hsiang Chen, Su-Wei Lin, Pi-Hsia Hung
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引用次数: 2

Abstract

The traditional test usually uses a score to present the students' learning performance; however, it seems difficult to clearly understand the students' learning performance only by the score. As a result, this paper proposes an adaptive fuzzy ontology for student learning assessment and applies it to mathematics area. First, the domain experts construct the adaptive mathematics fuzzy ontology by referring to the guidelines of mathematics learning area in Grades 1-9 curriculum. The natural language processing mechanism tags each term with its speech and then filters the terms with useless speeches from the response data. Based on the genetic learning mechanism, the fuzzy reasoning mechanism then reasons the similarity strength between the kept terms and the constructed ontology. The semantic summary mechanism next summarizes the students' learning performance based on the inferred results. Finally, the diagnosis report mechanism presents the diagnosed reports to make officers, teachers, and students themselves much understand examinees' learning progress. Experimental results indicate that the proposed method can generate the suitable summarized sentences to allow teachers to quickly understand which mathematical topic is the one that students should be improved in the future.
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学生评价的自适应模糊本体
传统的考试通常用分数来展示学生的学习表现;然而,仅凭分数似乎很难清楚地了解学生的学习表现。为此,本文提出了一种用于学生学习评价的自适应模糊本体,并将其应用于数学领域。首先,领域专家参照1-9年级课程中数学学习领域的指导思想,构建自适应数学模糊本体。自然语言处理机制用其语音标记每个术语,然后从响应数据中过滤出具有无用语音的术语。在遗传学习机制的基础上,模糊推理机制对保留的术语与构建的本体之间的相似度进行推理。然后,语义总结机制根据推断结果对学生的学习表现进行总结。最后,通过诊断报告机制呈现诊断报告,使领导、教师和学生自己都能更好地了解考生的学习进度。实验结果表明,该方法可以生成合适的总结句,让教师快速了解学生未来需要改进的数学主题。
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