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A Data Mining Approach to the Analysis of Students' Learning Styles in an e-Learning Community: A Case Study

机译:电子学习界学生学习方式分析的数据挖掘方法 - 以案例研究

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In recent years, there has been a radical change in the world of education and training that is causing that many schools, universities and companies are adopting the most modern technologies, mainly based on Web architectures and Web 2.0 instruments and tools, for learning, managing and sharing of knowledge. In this context, an e-Learning system can reach its maximum potential and effectiveness if it could take advantage of the information in its possession and process it in an intelligent and personalized way. The Educational Data Mining is an emergent field of research where the approach to personalization makes use of the log data generated by learners during their training process, to dynamically update users learning profiles such as skills and learning styles and identify students behavioral patterns. In this paper we present a case study of a data mining approach, based on cluster analysis, in order to support the detection of learning styles in a community of learners, following the Grasha-Riechmann learning styles model. As an e-learning framework we used the Moodle LMS platform and studied the log files generated by a course taken by a community of learners. The first experimental results suggest a connection between clusters and learning styles, reinforcing the use of this approach.
机译:近年来,人们对教育,是导致很多学校,大学和公司都采用最先进的技术训练的世界彻底的改变,主要是基于Web的架构和Web 2.0的手段和工具,学习,管理和分享知识的。在此背景下,一个E-Learning系统可达到其最大的潜力和有效性,如果它可以采取其掌握的信息优势,在智能和个性化的方式来处理它。教育数据挖掘是研究中的一个新兴领域,其中的方法来个性化利用过程中他们的训练过程中学习者产生的日志数据,动态地更新用户的学习曲线,如技能和学习方式,并确定学生的行为模式。在本文中,我们提出了一种数据挖掘方法的案例研究的基础上,聚类分析,以支持学习学习者社区的风格,继Grasha-Riechmann学习风格模型的检测。作为电子学习框架中,我们使用了Moodle的LMS平台,并研究通过学习者社区采取了过程中产生的日志文件。第一次实验结果表明集群和学习方式,增强了使用这种方法之间的连接。

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