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The Utilization of Data Analysis Techniques in Predicting Student Performance in Massive Open Online Courses (MOOCs)

机译:数据分析技术在大规模开放在线课程(MOOC)中预测学生表现的运用

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摘要

The growth of the Internet has enabled the popularity of open online learning platforms to increase over the years. This has led to the inception of Massive Open Online Courses (MOOCs) that enrol, millions of people, from all over the world. Such courses operate under the concept of open learning, where content does not have to be delivered via standard mechanisms that institutions employ, such as physically attending lectures. Instead learning occurs online via recorded lecture material and online tasks. This shift has allowed more people to gain access to education, regardless of their learning background. However, despite these advancements in delivering education, completion rates for MOOCs are low. In order to investigate this issue, the paper explores the impact that technology has on open learning and identifies how data about student performance can be captured to predict trend so that at risk students can be identified before they drop-out. In achieving this, subjects surrounding student engagement and performance in MOOCs and data analysis techniques are explored to investigate how technology can be used to address this issue. The paper is then concluded with our approach of predicting behaviour and a case study of the eRegister system, which has been developed to capture and analyse data.\ud\udKeywords: Open Learning; Prediction; Data Mining; Educational Systems; Massive Open Online Course; Data Analysis
机译:互联网的发展使开放式在线学习平台的受欢迎程度近年来不断提高。这导致了大规模开放式在线课程(MOOC)的诞生,该课程招募了来自世界各地的数百万人。此类课程在开放学习的概念下运作,其中不必通过机构采用的标准机制(例如亲自参加讲座)来提供内容。取而代之的是通过录制的讲座材料和在线任务在线学习。这种转变使更多的人获得了受教育的机会,无论他们的学习背景如何。但是,尽管在提供教育方面取得了这些进步,但MOOC的完成率仍然很低。为了调查此问题,本文探讨了技术对开放学习的影响,并确定了如何捕获有关学生表现的数据以预测趋势,以便可以在辍学学生之前识别出处于危险中的学生。为了实现这一目标,探索了有关学生在MOOC中的参与度和表现以及数据分析技术的主题,以研究如何使用技术来解决该问题。最后,本文以我们的行为预测方法和eRegister系统的案例研究作为结束,该系统已开发用于捕获和分析数据。\ ud \ ud关键字:开放式学习;预测;数据挖掘;教育系统;大规模公开在线课程;数据分析

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  • 作者

    Hughes, G; Dobbins, C;

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  • 年度 2015
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  • 原文格式 PDF
  • 正文语种 en
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