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Data-Driven Student Clusters Based on Online Learning Behavior in a Flipped Classroom with an Intelligent Tutoring System

机译:数据驱动的学生集群基于翻转教室中的在线学习行为,智能辅导系统

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The idea of clustering students according to their online learning behavior has the potential of providing more adaptive scaffolding by the intelligent tutoring system itself or by a human teacher. With the aim of identifying groups of students who would benefit from the same intervention, in this paper, we study a set of 104 weekly behaviors observed for 26 students in a blended learning environment with AC-ware Tutor, an ontology-based intelligent tutoring system. Online learning behavior in AC-ware Tutor is described using 8 tracking variables: (i) the total number of content pages seen in the learning process; (ii) the total number of concepts seen in the learning process; (iii) the total content proficiency score gained online; (iv) the total time spent online; (v) the total number of student logins to AC-ware Tutor; (vi) the stereotype value after the initial test in AC-ware Tutor, (vii) the final stereotype value in the learning process, and (viii) the mean stereotype variability in the learning process. The previous measures are used in a four-step analysis process that includes the following elements: data preprocessing (Z-score normalization), dimensionality reduction (Principal component analysis), the clustering (K-means), and the analysis of a posttest performance on a content proficiency exam. By using the Euclidean distance in K-means clustering, we identified 4 distinct online learning behavior clusters, which we designate by the following names: Engaged Pre-knowers, Pre-knowers Non-finishers, Hard-workers, and Non-engagers. The posttest proficiency exam scores were compared among the aforementioned clusters using the Mann-Whitney U test.
机译:根据他们的在线学习行为的聚类学生的想法具有智能辅导系统本身或人类教师提供更适应的脚手架。旨在识别将从同样干预中受益的学生群体,在本文中,我们研究了一系列104个每周行为,为26名学生在一个混合的学习环境中与AC-Ware导师,一个基于本体的智能辅导系统。使用8个跟踪变量描述了AC-Ware导师中的在线学习行为:(i)学习过程中看到的内容页数的总数; (ii)学习过程中看到的概念总数; (iii)在线获得的总内容熟练程度分数; (iv)在线度过的总时间; (v)对AC-Ware导师的学生登录总数; (vi)在AC-Ware导师中初始测试后的刻板印象值,(vii)学习过程中的最终刻板印象值,(viii)学习过程中的平均刻板印象可变性。以前的措施用于四步分析过程,包括以下元素:数据预处理(z-score标准化),维数减少(主成分分析),聚类(K-means),以及后测试性能的分析论内容能力考试。通过使用K-means聚类中的欧几里德距离,我们确定了4个不同的在线学习行为集群,我们通过以下名称指定:从事人们前的人,人们前非全职人员,勤劳和非引人工具。使用Mann-Whitney U测试在上述集群中比较了后测试熟练程度。

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