Pedro Manuel Moreno-Marcos, Carlos Alario-Hoyos, P. Merino, I. Estévez-Ayres, C. D. Kloos
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引用次数: 46
摘要
mooc (Massive Open Online Courses,大规模在线开放课程)中的论坛信息是这些课程中发生的社会互动的最重要信息来源。可以分析论坛消息来检测模式和学习者的行为。特别是,情绪分析(例如,积极和消极信息的分类)可以作为识别复杂情绪的第一步,例如兴奋,沮丧或无聊。这项工作的目的是比较不同的机器学习算法进行情感分析,使用一个真实的案例研究来检查结果如何提供关于MOOC中学习者情绪或模式的信息。情感分析使用了监督和非监督(基于词典的)算法。发现的最好的方法是随机森林和一种基于词典的方法,该方法使用单词字典。对案例研究的分析还显示,随着时间的推移,积极情绪也在演变,在课程开始时是最好的时刻,在同行评议评估截止日期前是最差的时刻。
Forum messages in MOOCs (Massive Open Online Courses) are the most important source of information about the social interactions happening in these courses. Forum messages can be analyzed to detect patterns and learners' behaviors. Particularly, sentiment analysis (e.g., classification in positive and negative messages) can be used as a first step for identifying complex emotions, such as excitement, frustration or boredom. The aim of this work is to compare different machine learning algorithms for sentiment analysis, using a real case study to check how the results can provide information about learners' emotions or patterns in the MOOC. Both supervised and unsupervised (lexicon-based) algorithms were used for the sentiment analysis. The best approaches found were Random Forest and one lexicon based method, which used dictionaries of words. The analysis of the case study also showed an evolution of the positivity over time with the best moment at the beginning of the course and the worst near the deadlines of peer-review assessments.