Evaluation of E-learning Activity Effectiveness in Higher Education Through Sentiment Analysis by Using Naïve Bayes Classifier

E. A. Laksana, A. Suryana, Heri Heryono
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引用次数: 1

Abstract

Sentiment analysis as part of text mining research domain has been being recognized due to the successful implementation in social media analysis. Sentiment analysis methods had intelligent ability to classify texts into negative or positive. Classified texts concluded whole users respond and described opinion polarity about particular topic. Based on this idea, this research took e-learning’s users opinion as object to be measured through sentiment analysis. The results can be used to evaluate the e-learning activity. This research had been implemented in Widyatama University which had been running e-learning activity for several years. Qualitative method by given questioner to users and gather the feedback is commonly used as evaluation of e-learning system previously. Still, questioner doesn’t represent the conclusion about the whole opinion. Hence, it needs the method to identify opinion polarity from e-learning member. The e-learning opinion data sets were gathered from questioner filled by e-learning member included both student and lecturer as participants. The participants gave review about learning outcome after their participation in e-learning activity. Their opinion was needed to describe current situation about e-learning activity. Therefore, the conclusion could be used to make improvement and described few achievements about the e-learning system. The data sets trained by Naïve Bayes classifier to group each user respond into negative or positive. The classification results were also evaluated by a number of particular evaluation metric used in data mining to show the classifier performance such as accuracy, precision, and recall.
基于朴素贝叶斯分类器的情绪分析法评价高等教育电子学习活动的有效性
情感分析作为文本挖掘研究领域的一部分,由于在社交媒体分析中的成功实施而得到了广泛的认可。情感分析方法具有将文本分类为消极或积极的智能能力。分类文本总结了整个用户的反应,并描述了对特定主题的意见极性。基于这一思路,本研究以e-learning的用户意见为对象,通过情感分析进行测量。研究结果可用于评价网络学习活动。这项研究是在Widyatama大学实施的,该大学已经开展了几年的电子学习活动。以往对电子学习系统的评价通常采用向用户提出问题并收集反馈的定性方法。然而,提问者并不代表整个观点的结论。因此,需要一种识别网络学习成员意见极性的方法。电子学习意见数据集收集自由学生和讲师作为参与者的电子学习成员填写的提问者。参与者对参与电子学习活动后的学习成果进行了回顾。需要他们的意见来描述电子学习活动的现状。因此,该结论可以用于改进和描述电子学习系统的一些成果。通过Naïve贝叶斯分类器训练的数据集,将每个用户的响应分为消极或积极。分类结果还通过数据挖掘中使用的一些特定评估指标进行评估,以显示分类器的性能,如准确性、精度和召回率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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