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Data-driven detection and characterization of communities of accounts collaborating in MOOCs

机译:MOOCS中账户群落的数据驱动检测与特征

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Collaboration is considered as one of the main drivers of learning and it has been broadly studied across numerous contexts, including Massive Open Online Courses (MOOCs). The research on MOOCs has risen exponentially during the last years and there have been a number of works focused on studying collaboration. However, these previous studies have been restricted to the analysis of collaboration based on the forum and social interactions, without taking into account other possibilities such as the synchronicity in the interactions with the platform. Therefore, in this work we performed a case study with the goal of implementing a data-driven approach to detect and characterize collaboration in MOOCs. We applied an algorithm to detect synchronicity links based on their submission times to quizzes as an indicator of collaboration, and applied it to data from two large Coursera MOOCs. We found three different profiles of user accounts, that were grouped in couples and larger communities exhibiting different types of associations between user accounts. The characterization of these user accounts suggested that some of them might represent genuine online learning collaborative associations, but that in other cases dishonest behaviors such as free-riding or multiple account cheating might be present. These findings call for additional research on the study of the kind of collaborations that can emerge in online settings.
机译:合作被认为是学习的主要驱动因素之一,并且在众多情况下广泛研究,包括大规模开放的在线课程(MooCs)。对Moocs的研究在过去几年中呈指数上升,并且有许多作品专注于研究合作。然而,这些以前的研究仅限于基于论坛和社会互动的合作分析,而不考虑其他可能性,例如与平台互动中的同步性。因此,在这项工作中,我们通过实现了实现数据驱动方法来检测和表征MOOCS中协作的目标进行案例研究。我们应用了一种算法,根据他们的提交时间来检测同步性链接,以将其作为协作指示器进行测验,并将其应用于来自两个大Coursera Moocs的数据。我们发现了三种不同的用户帐户配置文件,分组为伴侣和较大的社区,展示用户帐户之间的不同类型的关联。这些用户账户的特征表明它们中的一些可能代表真正的在线学习协作协会,但在其他情况下,可能存在搭便车或多个帐户作弊等不诚实行为。这些调查结果要求关于研究在线设置中可以出现的合作的研究的额外研究。

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