利用 AutoML 进行学生情感分析,提高教育质量

Corina Simionescu, Daniela Marcu, Marius Silviu Măciucă
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引用次数: 0

摘要

从学生与学习环境的互动中进行情感分析是教育领域研究人员感兴趣的一个话题,因为它可以通过集成到学习应用程序中的推荐系统提高教学过程的质量,或者通过根据学生的共同兴趣将他们分组并提供学习进度反馈来提高课程质量。情感分析有两种方法:一种是基于词典的方法,另一种是使用机器学习的方法。在本研究中,我们从两组代表学生对学校意见的数据中进行了情感分析。我们的目标是创建一个模型,帮助我们自动标注学生的意见,并赋予 0 到 4 分(0 分代表极度负面的意见)的情感分值。为了训练和评估模型的性能,我们使用了从 1443 名罗马尼亚高中生那里收集到的意见。我们提出的新颖之处在于人工标注系统。我们目前的研究采用机器学习方法对学生的意见进行分类,准确率达到 86.507%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward Better Education Quality through Students’ Sentiment Analysis Using AutoML
Sentiment analysis from students' interactions with learning environments is a topic of interest for researchers in the field of education because it can make important contributions to improving the quality of instructional processes through recommendation systems integrated into learning applications, or by improving the quality of courses, by grouping students according to their common interests and providing feedback on school progress. There are two approaches to sentiment analysis: one lexicon-based and another that uses machine learning. In this study, we present a sentiment analysis from two own data sets that represent students' opinions about school. Our goal is to create a model that helps us to automatically label students' opinions, assigning sentiment scores between 0 and 4 (0 for an extremely negative opinion). To train and evaluate the performance of the model, we used opinions collected from 1443 Romanian high school students. The novelty that we propose is the manual labeling system. Our current research which uses a machine learning approach to classify students' opinions obtains an accuracy of 86.507%.
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