Analisis Sentimen Program Mbkm Pada Media Sosial Twitter Menggunakan KNN Dan SMOTE

Komang Pramayasa, Md Dendi Maysanjaya, Gusti Ayu, Agung Diatri Indradewi
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Abstract

The Merdeka Belajar-Kampus Merdeka (MBKM) program is a relatively new program implemented in Indonesia since February 2020. Like a new program, the implementation of the MBKM program is also followed by various pro and con attitudes. Therefore, a sentiment analysis technique is needed to determine the public opinion towards the MBKM program. The purpose of this study is to determine the performance of the KNN method in performing sentiment classification optimized by the SMOTE method in overcoming the problem of unbalanced data and to determine the tendency of public sentiment towards the implementation of the MBKM program. Based on the research results, the KNN method optimized with the SMOTE method is proven to improve classification performance. From initially producing an accuracy value of 76.13%, precision of 76.03%, recall of 76.13% and f1-score of 76.01% there was an increase in accuracy value to 76.13%, precision to 76.03%, recall to 76.13%, and f1-score to 76.01%. In this study, it was found that community responses tended to be neutral towards the MBKM program. The community feels that the MBKM program is a program that can increase student experience. However, there are still program systems that are considered complicated and need to be evaluated.
自2020年2月起,印尼实施了独立自主项目(MBKM)。MBKM项目的实施如同一个新项目一样,也伴随着各种赞成和反对的态度。因此,需要一种情感分析技术来确定公众对MBKM计划的看法。本研究的目的是确定KNN方法在执行SMOTE方法优化的情绪分类中克服数据不平衡问题的性能,并确定公众情绪对MBKM计划实施的倾向。研究结果表明,采用SMOTE方法优化的KNN方法可以提高分类性能。从最初产生的准确率为76.13%,准确率为76.03%,召回率为76.13%,f1-score为76.01%,准确率为76.13%,准确率为76.03%,召回率为76.13%,f1-score为76.01%。本研究发现,社区对MBKM项目的反应趋于中性。社区认为MBKM项目是一个可以增加学生经验的项目。然而,仍然有一些程序系统被认为是复杂的,需要进行评估。
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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