Sentiment Analysis of Student Comment on the College Performance Evaluation Questionnaire Using Naïve Bayes and IndoBERT

Wiga Maaulana Baihaqi, Arif Munandar
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Abstract

The development of the Internet has played a significant role in various aspects of life and has generated vast amounts of data, including student comments about universities. The challenge in analyzing comment data is the large number of students providing feedback, which makes manual analysis impractical. The purpose of this study is to analyze the performance evaluation of universities by students in terms of positive and negative sentiments, with the aim of assessing the level of student satisfaction with all elements and areas of university operations. This research utilized the Naïve Bayes algorithm and the IndoBERT model to build a classification model based on questionnaire data, starting from the data collection process, data preprocessing, feature extraction, modeling, and evaluation. The results of the IndoBERT model demonstrated the best performance, with an accuracy of 85%. The IndoBERT model effectively recognizes sentiments in text, distinguishing between positive and negative comments regarding university performance.
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使用 Naïve Bayes 和 IndoBERT 对学生对大学成绩评估问卷的评论进行情感分析
互联网的发展在生活的各个方面都发挥了重要作用,并产生了大量数据,包括学生对大学的评论。分析评论数据的挑战在于提供反馈的学生人数众多,人工分析不切实际。本研究旨在从正面和负面情绪两个方面分析学生对大学的绩效评价,目的是评估学生对大学运营的所有要素和领域的满意程度。本研究利用奈伊夫贝叶斯算法和 IndoBERT 模型,从数据收集过程、数据预处理、特征提取、建模和评价等方面入手,建立了基于问卷数据的分类模型。IndoBERT 模型的结果表明性能最佳,准确率达到 85%。IndoBERT 模型能有效识别文本中的情绪,区分有关大学表现的正面和负面评论。
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