On the Need for Fine-Grained Analysis of Gender Versus Commenting Behaviour in MOOCs

Mohammad Alshehri, Jonathan G. K. Foss, A. Cristea, M. Kayama, Lei Shi, Ahmed Alamri, A. Tsakalidis
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引用次数: 8

Abstract

Stereotyping is the first type of adaptation ever proposed. However, the early systems have never dealt with the numbers of learners that current Massive Open Online Courses (MOOCs) provide. Thus, the umbrella question that this work tackles is if learner characteristics can predict their overall, but also fine-grain behaviour. Earlier results point at differences related to gender or to age. Here, we analyse gender versus commenting behaviour. Our fine-grained analysis shows that the result may further depend on the course topic, or even week. Surprisingly, for instance, women chat less in a Psychology-related course, but more (or similar) on a Computer Science course. These results are analysed in this paper in details, including two different methods of averaging comments, leading to remarkably different results. The outcomes can help in informing future runs, in terms of potential personalised feedback for teachers and students.
论慕课中性别与评论行为的细粒度分析
刻板印象是人们提出的第一种适应方式。然而,早期的系统从来没有处理过当前大规模开放在线课程(MOOCs)提供的学习者数量。因此,这项工作解决的总体问题是,学习者的特征是否可以预测他们的整体行为,也可以预测他们的细粒度行为。早期的研究结果指出,这些差异与性别或年龄有关。在这里,我们分析了性别与评论行为的关系。我们的细粒度分析表明,结果可能进一步取决于课程主题,甚至是星期。例如,令人惊讶的是,女性在心理学相关课程上聊天较少,但在计算机科学课程上聊天较多(或类似)。本文对这些结果进行了详细的分析,包括两种不同的平均评论方法,导致了显著不同的结果。就教师和学生的潜在个性化反馈而言,结果可以帮助为未来的运行提供信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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