首页> 外文会议>IEEE Global Engineering Education Conference >Educational data mining and data analysis for optimal learning content management: Applied in moodle for undergraduate engineering studies
【24h】

Educational data mining and data analysis for optimal learning content management: Applied in moodle for undergraduate engineering studies

机译:教育数据挖掘和数据分析,以实现最佳的学习内容管理:应用于大学工程研究的穆迪

获取原文

摘要

Educational data mining applies data mining methods and tools to education-related data, typically collected through the use of an e-learning platform. Data stored in an e-learning platform database include user-platform interaction events (counts of scrolls, mouse clicks or page loads), platform access times per session or in total, times between events and various assessment scores such as grades per quiz or per session test, final grades, etc. In the present paper we focus on the time between actions (TBA) taken by the learner while he/she interacts with the platform. TBA values relay information on the mode of interaction of an individual learner with the platform. The two major questions addressed are (i) whether TBA values follow any probability density function (PDF) and if so, which is the PDF that optimally fits the data, and (ii) whether the parameters of such optimally fitted PDFs might serve as features for the clustering of the learning content modules or sessions into clusters of similar characteristics or functionalities. Results verify that skewed (asymmetric) PDFs can be fitted on the TBA value histograms with adequate accuracy. Furthermore, the parameters of few optimally fitted PDFs, used as a feature vector, result in a meaningful clustering of learning content parts into clusters of similar “character”. Clustering results may then be used as a recommendation to the course designer / instructor, to improve content structure or to optimally distribute/sequence parts of the course material.
机译:教育数据挖掘将数据挖掘方法和工具应用于与教育相关的数据,这些数据通常是通过使用电子学习平台来收集的。电子学习平台数据库中存储的数据包括用户平台交互事件(滚动次数,鼠标点击或页面加载次数),每次会话或总计的平台访问时间,事件之间的时间以及各种评估分数,例如每项测验或每项的等级会话测试,最终成绩等。在本文中,我们重点关注学习者与平台交互时所采取的两次动作之间的时间(TBA)。 TBA重视有关单个学习者与平台交互方式的信息。解决的两个主要问题是(i)TBA值是否遵循任何概率密度函数(PDF),如果是,则它是最适合数据的PDF,以及(ii)这种最适合的PDF的参数是否可以用作特征用于将学习内容模块或会话聚类为具有相似特征或功能的聚类。结果证明,倾斜(不对称)的PDF可以正确地拟合到TBA值直方图上。此外,很少的最佳拟合PDF的参数(用作特征向量)导致将学习内容部分有意义地聚类为类似“字符”的聚类。然后,可以将聚类结果用作对课程设计者/讲师的推荐,以改善内容结构或最佳地分配/排列课程材料的各个部分。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号