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Sentiment analysis of students feedback: A study towards optimal tools

机译:学生反馈的情感分析:针对最佳工具的研究

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Educational Institutions attempts to gather feedback from students' to study their sentiments towards courses and instructors and to enhance the performance of the instructors. Basically, such feedbacks are gathered at the end of the semester with the use of survey forms. However, this technique is very tedious, slow and time consuming. With the advent of social media, especially Facebook, the collection of feedback become easier through Facebook pages and groups. But, analyzing those feedbacks is equally challenging. This paper addresses those problems and uncovers the best model for analyzing those feedbacks with the use of machine learning techniques such as Support Vector Machines (SVM), Maximum Entropy (ME), Naive Bayes (NB), and Complement Naive Bayes (CNB) and applying neutral class. And, found SVM as the highest performer with an accuracy of 97% by applying different preprocessing and feature extraction techniques and avoiding neutral class, which outperform state-of-art work by 2%.
机译:教育机构试图从学生那里收集反馈,以研究他们对课程和讲师的情绪,并提高讲师的表现。基本上,这些反馈是在学期末使用调查表收集的。但是,该技术非常繁琐,缓慢且耗时。随着社交媒体(尤其是Facebook)的出现,通过Facebook页面和群组收集反馈变得更加容易。但是,分析这些反馈同样具有挑战性。本文解决了这些问题,并利用支持向量机(SVM),最大熵(ME),朴素贝叶斯(NB)和互补朴素贝叶斯(CNB)等机器学习技术,揭示了用于分析这些反馈的最佳模型。应用中立阶级。而且,通过采用不同的预处理和特征提取技术并避免使用中立类,SVM以97%的精度被认为是性能最高的,其性能比最新技术高2%。

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