学习SCORM兼容环境下的投资组合分析和挖掘

Jun-Ming Su, S. Tseng, Wei Wang, Jui-Feng Weng, Jin-Tan Yang, Wen-Nung Tsai
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引用次数: 93

摘要

随着互联网的蓬勃发展,网上学习系统越来越受欢迎。可共享内容对象参考模型(SCORM) 1.3提供了排序和导航,用于定义课程排序行为,控制排序,选择和交付课程,并将内容组织成层次结构,即活动树。因此,如何根据个人的学习特点和能力提供个性化的课程,如何为不同的学习者创建、表示和维护具有适当关联排序定义的活动树,成为两个重要的问题。然而,为每个学习者手工设计个性化的学习活动树几乎是不可能的。学习行为的信息,称为学习档案,可以帮助教师了解学习者获得高分或低分的原因。因此,在本文中,我们提出了一种学习组合挖掘(LPM)方法,包括四个阶段:1)用户模型定义阶段:基于教学理论定义学习者轮廓。2)学习模式提取阶段:应用顺序模式挖掘技术从学习序列中提取出最大的频繁学习模式,将原始学习序列转化为位向量,然后利用基于距离的聚类方法将学习性能好的学习者分组为若干个聚类。3)决策树构建阶段:使用具有相应聚类标签的三分之二的学习者概要作为训练数据创建决策树,其余为测试数据。4)活动树生成阶段:将每个创建的包含多个学习模式的聚类作为排序规则,生成带有SN关联排序规则的个性化活动树。最后,为了评估我们提出的学习组合分析方法,进行了几个实验,结果表明,生成具有排序规则的个性化活动树对学习者是可行的。
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Learning portfolio analysis and mining in SCORM compliant environment
With vigorous development of the Internet, e-learning system has become more and more popular. Sharable content object reference model (SCORM) 1.3 provides the sequencing and navigation to define the course sequencing behavior, control the sequencing, select and deliver of course, and organize the content into a hierarchical structure, namely activity tree. Therefore, how to provide customized course according to individual learning characteristics and capability, and how to create, represent and maintain the activity tree with appropriate associated sequencing definition for different learners become two important issues. However, it is almost impossible to design personalized learning activities trees for each learner manually. The information of learning behavior, called learning portfolio, can help teacher understand the reason why a learner got high or low grade. Thus, in this paper, we propose a learning portfolio mining (LPM) Approach including four phase: 1) user model definition phase: define the learner profile based upon pedagogical theory. 2) Learning pattern extraction phase: apply sequential pattern mining technique to extract the maximal frequent learning patterns from the learning sequence, transform original learning sequence into a bit vector, and then use distance based clustering approach to group learners with good learning performance into several clusters. 3) Decision tree construction phase: use two third of the learner profiles with corresponding cluster labels as training data to create a decision tree, and the remaining are the testing data. 4) Activity tree generation phase: use each created cluster including several learning patterns as sequencing rules to generate personalized activity tree with associated sequencing rules of SN. Finally, for evaluating our proposed approach of learning portfolio analysis, several experiments have been done and the results show that generated personalized activity trees with sequencing rules are workable for learners.
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