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Using feature selection and association rule mining to evaluate digital courseware

机译:使用特征选择和关联规则挖掘来评估数字课件

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Effective digital courseware should be easy to implement and integrate into instructional plans, saving teachers time and helping them support their students' learning needs. It should also not only enable students to achieve explicit learning objectives but also accelerate the pace at which they do so. This paper highlights the advantage of using Feature Selection techniques and Associative rule mining to get insightful knowledge from the log data from the Learning Management System (Moodle). The Machine Learning approach can be objectively deployed to obtain a predictive relationship and behavioral aspects that permits mapping the interaction behaviour of students with their course outcome. The knowledge discovered could immensely assist in evaluating and validating the various learning tools and activities within the course, thus, laying the groundwork for a more effective learning process. It is hoped that such knowledge would result in more effective courseware that provides for a rich, compelling, and interactive experience that will encourage repeated, prolonged, and self-motivated use.
机译:有效的数字课件应该易于实施并融入教学计划,拯救教师时间并帮助他们支持他们的学生学习需求。它也应该使学生能够实现明确的学习目标,但也加速了他们这样做的步伐。本文突出了使用特征选择技术和关联规则挖掘的优势,从学习管理系统(Moodle)的日志数据中获取有洞察力知识。可以客观地部署机器学习方法以获得预测的关系和行为方面,允许使用课程结果映射学生的交互行为。发现的知识可以完全有助于评估和验证课程内的各种学习工具和活动,从而为更有效的学习过程奠定基础。希望这样的知识将导致更有效的课件,以提供富人,引人注目和互动体验,这将鼓励重复,长期和自我激励的使用。

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