促进教育:用于反馈和监测电子学习影响的最先进的机器学习框架

Harry Raymond Joseph
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引用次数: 6

摘要

电子学习的一个严重障碍是,这些系统似乎没有考虑到教师监督的优势。教师能够监控几个学生的学习进度,而不考虑他们的学习能力,并试图引导所有学生朝着一个共同的学习目标前进。今天的电子学习系统没有监控组件。大多数方法定制内容以适应不同的学习能力,从而产生不同的学习目标。然而,本研究试图应用机器学习方法来定制的不是内容,而是内容的呈现,假设几乎是共同的学习目标——就像老师如何修改内容呈现一样,如果学生根据他们的反馈不清楚某些方面。开发这样一个监测系统的主要挑战是决定要监测交互的哪些方面,以及如何将这些方面解释为具有可操作见解的反馈——也就是说,决定学习模式,然后应用学习算法来衡量学习者对所呈现的内容的兴趣或不感兴趣。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Promoting education: A state of the art machine learning framework for feedback and monitoring E-Learning impact
A serious impediment in E-Learning is that these systems seem to have failed to consider the advantages of the supervision of a teacher. Teachers are able to monitor the progress made by several students, irrespective of their learning abilities and attempt to channel all students towards a common learning goal. E-Learning systems today don't possess a monitoring component. Most approaches customize content to suit differing learning abilities, resulting in different learning goals. However, this study attempts to apply machine learning methods that customizes not the content, but the presentation of the content assuming almost common learning goals - just like how a teacher would modify the content presentation, if some aspects are not clear to students based on their feedback. The primary challenge towards developing such a monitoring system is to decide what aspects of the interaction are to be monitored and how these are to interpreted as feedback with actionable insights - that is, to decide the learning schema, and then apply learning algorithms to gauge the interest or disinterest of the learner in the content presented.
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