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Educational courseware evaluation using Machine Learning techniques

机译:教育课件使用机器学习技术进行评估

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With the introduction of massive open online courses (MOOCs) and other web-based learning management systems (LMS), there is a greater need to develop methods for exploring the unique types of data that come from the educational context. This paper highlights the advantage of using Machine Learning (ML) as an e-planning tool to enhance learning and improve courseware development. Researchers generally consider student evaluation survey on courses to be highly reliable and at least moderately valid on courseware evaluation. However, low response rate, retaliation, grades and comparison with past instructors sometimes affects the reliability of the result. ML algorithms has been deployed in this paper to intelligently examine the interaction log data from the LMS to obtain a predictive map that permits mapping the online interaction behaviour of students with their course outcome. These predictive relationships are then investigated and ranked using various ML algorithms to evaluate and validate the various learning tools and activities, and their effectiveness within the course.
机译:通过引入大规模开放的在线课程(MOOCS)和其他基于Web的学习管理系统(LMS),有更大的需要开发用于探索来自教育背景的独特数据类型的方法。本文突出了使用机器学习(ML)作为电子规划工具来增强学习和完善课件开发的优势。研究人员通常考虑学生评估调查,以高度可靠,并且在课程评估中至少适用。然而,与过去教师的低响应率,报复,等级和比较有时会影响结果的可靠性。本文部署了ML算法,以智能地检查来自LMS的交互日志数据,以获得预测地图,允许使用学生的课程结果映射学生的在线交互行为。然后研究这些预测关系,并使用各种ML算法进行排序,以评估和验证各种学习工具和活动,以及它们在课程中的有效性。

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