越南学生反馈语料库上的深度学习与传统分类器之比较

Phu X. V. Nguyen, T. T. T. Hong, Kiet Van Nguyen, N. Nguyen
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引用次数: 30

摘要

学生反馈是收集学生意见,提高培训活动质量的重要来源。对学生反馈数据进行情绪分析,我们可以确定情绪的极性,这些极性表达了机构中的所有问题,因为必要的改变将被应用于提高教学质量。本研究将机器学习和自然语言处理技术(朴素贝叶斯、最大熵、长短期记忆、双向长短期记忆)应用于某大学越南学生反馈语料库。根据不同的评价标准,对最终结果进行比较和评价,找出最有效的模型。实验结果表明,双向长短期记忆算法在f1得分测量上的表现优于其他三种算法,在情感分类任务上的表现为92.0%,在主题分类任务上的表现为89.6%。此外,我们开发了一个情感分析应用程序来分析学生的反馈。该应用程序将帮助学校认识到学生对问题的看法,并找出仍然存在的缺点。通过使用该应用程序,机构可以提出适当的方法来提高未来培训活动的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning versus Traditional Classifiers on Vietnamese Students’ Feedback Corpus
Student’s feedback is an important source of collecting students’ opinions to improve quality of training activities. Implementing sentiment analysis into student feedback data, we can determine sentiments polarities which express all problems in the institution since changes necessary will be applied to improve the quality of teaching and learning. This study focused on the machine learning and natural language processing techniques (Naive Bayes, Maximum Entropy, Long Short-Term Memory, Bi-Directional Long Short-Term Memory) on the Vietnamese Students’ Feedback Corpus collected from a university. The final results were compared and evaluated to find the most effective model based on different evaluation criteria. The experimental results show that Bi-Directional Long Short-Term Memory algorithm outperformed than three other algorithms in term of the F1-score measurement with 92.0% on the sentiment classification task and 89.6% on the topic classification task. In addition, we developed a sentiment analysis application analyzing student feedback. The application will help the institution to recognize students’ opinions about a problem and identify shortcomings that still exist. With the use of this application, the institution can propose an appropriate method to improve the quality of training activities in the future.
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