基于自然语言处理技术的MOOC论坛学习者情绪分析

Hania Marfani, Saman Hina, Huma Tabassum
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引用次数: 0

摘要

在过去的几年里,mooc越来越受欢迎。特别是在冠状病毒爆发后,每个人都试图在舒适的家中获得一些知识和技能,并确保自己的安全。由于mooc的参与者数量突然增加,因此需要一个自动化系统来评估学习者的评论和反馈,并找到他们陈述背后的情感。这种分析将帮助培训师发现他们的缺点,使他们的课程更好。对于情感分析,可以使用几种方法。本研究旨在提供一个系统,该系统将对新数据集进行情感分析,并显示基于词典和基于转换器的情感分析模型的比较。对于基于词汇的,选择了维德,对于基于变压器的,选择了最先进的BERT。BERT被发现非常好,准确率为84%,f1得分为0.64。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Learners’ Sentiments on MOOC Forums using Natural Language Processing Techniques
MOOCs have gained a lot of popularity for past few years. Especially after the outbreak of Coronavirus, everyone is trying to gain some knowledge and skill while being at the comfort of home and making themselves safe. Due to sudden increase in the number of participants on MOOCs there is a need for an automated system to be able to assess the reviews and feedbacks given by the learners and find the sentiments behind their statements. This analysis will help trainers identify their shortcoming and make their courses even better. For sentiments analysis, several approaches may be used. This research aims to provide a system which will perform sentiments analysis on the novel dataset and show the comparison of lexicon-based vs transformer-based sentiment analysis models. For lexicon based, VADER was chosen and for transformer-based, state-of-the-art BERT was chosen. BERT was found to be exceptionally good with an accuracy of 84% and F1-score of 0.64.
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