Danmaku-Based Automatic Analysis of Real-Time Online Learning Engagement

Linzhou Zeng, Zhibang Tan, Yougang Ke, Lingling Xia
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Abstract

In recent years, there has been a rapid growth of online learning in higher education. Apart from professional online course platforms, many online video sharing websites have also provided online learning opportunities for college students. One of the most popular websites among college students in China is Bilibili, a Shanghai-based Chinese video sharing website known for its danmaku commenting system. This system enables users to post scrolling comments synchronized with the video timeline while the video is playing. Which attracts young students due to the lively user interaction. As a result, an increasing number of Chinese students are utilizing online courses on Bilibili as a supplementary learning resource alongside traditional classroom learning. Despite its popularity, online learning faces the challenge of students’ lack of participation more than traditional face-to-face learning does. To understand their learning involvement, we propose a novel danmaku-based automatic analysis model that extracts three dimensions of online learning engagement using the Text Mind software. This model enables us to understand the students’ learning patterns both as clusters and as individuals. Based on the model results, we present corresponding intervention strategies for different types of students based on their individual engagement characteristics.
基于丹幕的实时在线学习参与度自动分析
近年来,高等教育中的在线学习发展迅速。除了专业的在线课程平台,许多在线视频分享网站也为大学生提供了在线学习的机会。在中国,最受大学生欢迎的网站之一是 Bilibili,这是一家位于上海的中文视频共享网站,以其 "段子手 "评论系统而闻名。该系统使用户能够在视频播放的同时发表与视频时间轴同步的滚动评论。这种生动的用户互动吸引了众多年轻学生。因此,越来越多的中国学生将 Bilibili 上的在线课程作为传统课堂学习的补充学习资源。尽管在线学习很受欢迎,但与传统的面对面学习相比,它面临着学生参与度不足的挑战。为了了解学生的学习参与度,我们提出了一种基于丹幕的新型自动分析模型,利用 Text Mind 软件提取在线学习参与度的三个维度。通过该模型,我们可以了解学生作为群组和个体的学习模式。基于模型结果,我们根据不同类型学生的个体参与特征,提出了相应的干预策略。
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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