Decoding Video Logs: Unveiling Student Engagement Patterns in Lecture Capture Videos

Gökhan Akçapınar, Erkan Er, Alper Bayazıt
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Abstract

Lecture capture videos, a popular type of instructional content used by instructors to share course recordings online, play a significant role in educational settings. Compared to other educational videos, these recordings require minimal time and effort to produce, making them a preferred choice for disseminating course materials. Despite their numerous benefits, there exists a scarcity of data-driven evidence regarding students’ use of and engagement with lecture capture videos. Most existing studies rely on self-reported data, lacking comprehensive insights into students’ actual video engagement. This research endeavor sought to bridge this gap by investigating university students’ engagement patterns while watching lecture capture videos. To achieve this objective, we conducted an analysis of a large-scale dataset comprising over one million rows of video interaction logs. Leveraging clustering and process mining methodologies, we explored the data to reveal valuable insights into students’ video engagement behaviors. Our findings indicate that in approximately 60% of students’ video-watching sessions, only a small portion of the videos (an average of 7%) is watched. Our results also show that visiting the video page does not necessarily mean that the student watched it. This study may contribute to the existing literature by providing robust data-driven evidence on university students’ lecture capture video engagement patterns. It is also expected to contribute methodologically to capturing, preprocessing, and analyzing students’ video interactions in different contexts.
解码视频日志:揭示讲座捕捉视频中的学生参与模式
讲座录制视频是一种流行的教学内容类型,被教师用于在线共享课程录制,在教育环境中发挥着重要作用。与其他教学视频相比,这些视频只需花费极少的时间和精力即可制作完成,因此成为传播课程材料的首选。尽管这些视频好处多多,但有关学生使用和参与讲座录制视频的数据证据却很少。大多数现有研究都依赖于自我报告数据,缺乏对学生实际视频参与情况的全面了解。本研究试图通过调查大学生在观看讲课视频时的参与模式来弥补这一不足。为了实现这一目标,我们分析了由超过一百万行视频交互日志组成的大规模数据集。利用聚类和流程挖掘方法,我们对数据进行了探索,以揭示学生视频参与行为的宝贵见解。我们的研究结果表明,在大约 60% 的学生视频观看会话中,只有一小部分视频(平均 7%)被观看。我们的研究结果还表明,访问视频页面并不一定意味着学生观看了视频。本研究为大学生的讲座捕捉视频参与模式提供了可靠的数据证据,从而为现有文献做出了贡献。此外,本研究还有望在方法论上为捕捉、预处理和分析学生在不同情境下的视频互动做出贡献。
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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