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Data-Driven Analysis of Engagement in Gamified Learning Environments: A Methodology for Real-Time Measurement of MOOCs

机译:在游戏化学习环境中的参与度的数据驱动分析:MOOC实时测量的方法

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Welfare and economic development is directly dependent on the availability of highly skilled and educated individuals in society. In the UK, higher education is accessed by a large percentage of high school graduates (50% in 2017). Still, in Brazil, a limited number of pupils leaving high schools continue their education (up to 20%). Initial pioneering efforts of universities and companies to support pupils from underprivileged backgrounds, to be able to succeed in being accepted by universities include personalised learning solutions. However, initial findings show that typical distance learning problems occur with the pupil population: isolation, demotivation, and lack of engagement. Thus, researchers and companies proposed gamification. However, gamification design is traditionally exclusively based on theory-driven approaches and usually ignore the data itself. This paper takes a different approach, presenting a large-scale study that analysed, statistically and via machine learning (deep and shallow), the first batch of students trained with a Brazilian gamified intelligent learning software (called CamaleOn), to establish, via a grassroots method based on learning analytics, how gamification elements impact on student engagement. The exercise results in a novel proposal for realtime measurement on Massive Open Online Courses (MOOCs), potentially leading to iterative improvements of student support. It also specifically analyses the engagement patterns of an underserved community.
机译:福利和经济发展直接取决于社会上高技能和受过良好教育的个人的可获得性。在英国,大部分高中毕业生都可以接受高等教育(2017年为50%)。尽管如此,在巴西,仍有少数学生从高中毕业后继续接受教育(高达20%)。大学和公司为支持贫困家庭的学生提供的初步开创性努力,是要能够成功地被大学接受,包括个性化的学习解决方案。但是,最初的发现表明,学生群体普遍存在远程学习问题:孤独,动力不足和缺乏参与。因此,研究人员和公司提出游戏化的建议。但是,游戏化设计传统上完全基于理论驱动的方法,并且通常会忽略数据本身。本文采用了不同的方法,提出了一项大规模研究,该研究通过统计学和机器学习(深层和浅层)进行了分析,这是第一批接受巴西游戏化智能学习软件(称为CamaleOn)培训的学生,他们可以通过基于学习分析的草根方法,游戏化元素如何影响学生的参与度。这项练习提出了有关大规模开放在线课程(MOOC)实时测量的新颖建议,有可能导致迭代地改善学生支持。它还专门分析了服务不足的社区的参与模式。

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