Analyzing emotions in online classes: Unveiling insights through topic modeling, statistical analysis, and random walk techniques

Benyoussef Abdellaoui , Ahmed Remaida , Zineb Sabri , Mohammed Abdellaoui , Abderrahim El Hafidy , Younes El Bouzekri El Idrissi , Aniss Moumen
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引用次数: 0

Abstract

High dropout rates globally perpetuate educational disparities with various underlying causes. Despite numerous strategies to address this issue, more attention should be given to understanding and addressing student emotions during classes. This lack of focus adversely affects learner engagement and retention rates. While previous studies on online learning have primarily emphasized the effectiveness of technology, infrastructure, cognition, motivation, and economic benefits, there is still a gap in understanding the emotional aspects of distance learning. First, this study addresses this gap by employing thematic modeling and utilizing non-negative matrix factorization (NMF) for emotion recognition through students’ deep learning techniques and facial emotion recognition (FER). Second, statistical analysis of these findings further augments the depth of the study. Finally, the research proposes a mathematical model based on the random walk of emotional state transitions. The findings of this study underscore the importance of considering emotions in distance learning environments and their significant impact on student’s academic performance and satisfaction. By acknowledging and addressing these emotional factors, educators can enhance learner engagement, promote positive emotions, mitigate negative emotions during online learning, and ultimately improve the effectiveness of online courses.

分析在线课堂中的情绪:通过主题建模、统计分析和随机漫步技术揭示洞察力
全球辍学率居高不下,导致教育差距长期存在,其根本原因是多方面的。尽管有许多策略来解决这一问题,但仍应更多地关注了解和处理学生在课堂上的情绪。缺乏关注会对学习者的参与度和保留率产生不利影响。以往关于在线学习的研究主要强调技术的有效性、基础设施、认知、学习动机和经济效益,但在了解远程学习的情感方面仍然存在差距。首先,本研究通过学生的深度学习技术和面部情绪识别(FER),采用主题建模和非负矩阵因式分解(NMF)进行情绪识别,从而弥补了这一空白。其次,对这些研究结果的统计分析进一步增强了研究的深度。最后,研究提出了一个基于情绪状态转换随机漫步的数学模型。本研究的发现强调了在远程学习环境中考虑情绪的重要性,以及情绪对学生学习成绩和满意度的重要影响。通过认识和解决这些情绪因素,教育者可以提高学习者的参与度,促进积极情绪,缓解在线学习中的消极情绪,并最终提高在线课程的有效性。
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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