学生在线课程评论中学术负面情绪与话题的联合研究

Zhi Liu, Chongyang Yang, Xian Peng, Jianwen Sun, Sannyuya Liu
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引用次数: 5

摘要

目前,随着mooc互动学习技术的不断进步,大量的学生评论(sgc)产生了两种主要情绪(积极和消极)。这些情感取向通常与特定的学习主题或所讨论的方面有关,对教师和开发者提供丰富的学术反馈具有价值。特别是,可以利用负面情绪和话题来深入了解学习者在在线学习中遇到的问题和障碍。然而,从非结构化的sgc中获取相关细节是具有挑战性的。在本文中,我们提出了一个扩展句子lda (SLDA)的生成概率模型,即情感话题联合概率模型(ETJM),以情感话题对来探索负面意见。该模型首先自动提取负面情绪密度高的句子,然后将情绪和话题结合起来,探索话题的负面情绪反馈。实验结果表明,学习者对学习内容、在线作业和课程证书等问题提出了一些负面评价。这些问题的总结可以反馈给教师,以规范和改进教学方法、策略和学习内容的设计。
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Joint Exploration of Negative Academic Emotion and Topics in Student-Generated Online Course Comments
Currently, with the increasing advancement of interactive learning technologies in MOOCs, a large number of student-generated comments (SGCs) have been substantially produced with two primary emotions (positive and negative). The emotional orientations are typically related with specific learning topics or aspects discussed, which is of value to offer abundant academic feedbacks for teachers and developers. Especially, the negative emotion and topics can be exploited to get an in-depth insight of the problems and barriers encountered by learners in online learning. However, it is challenging to capture relevant details from unstructured SGCs. In this paper, we propose a generative probabilistic model that extends Sentence-LDA (SLDA), namely Emotion Topic Joint Probabilistic Model (ETJM), to explore negative opinions in terms of pairs of which we call emo-topic. The model first automatically extracts the sentences with the high negative emotion density (NED), and then incorporates emotion and topic together to explore negative emotional feedbacks towards topics. The experimental results show that learners extended some negative comments towards the issues about learning content, online assignments and certificates of courses. The summarization of these issues can be given back to teachers to regulate and improve the teaching methods, strategies and design of learning contents.
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