Opinion mining indonesian presidential election on twitter data based on decision tree method

Nur Ghaniaviyanto Ramadhan, Merlinda Wibowo, Nur Fatin Liyana Mohd Rosely, C. Quix
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引用次数: 1

Abstract

Indonesia is a country led by a president. The term of the leadership of a president will be democratically elected every five years. The current president will end his term of office in 2024. So that in that year, the people will hold a direct general election to determine the president between 2024 and 2029. Before the general election was held in Indonesia itself, it was thick related to the campaign for each presidential candidate carried out by his supporters. The campaign is carried out directly to village locations and on social media Twitter/Facebook/YouTube. His campaign writing on Twitter is exciting to analyze. Even now, many tweets related to the 2024 presidential election contain various opinions from the public. This study will examine the sentiment of someone's tweet to see the public's statement regarding the 2024 presidential election. The resulting sentiment categories are positive, negative, and neutral, and the word tweet related to the sentiment category will be visualized. The results of the sentiment category will then be classified using a tree-based method, namely a decision tree. The accuracy generated by applying the decision tree method is 99.3%. The decision tree method is also superior to the regression-based way by 2.5%.
基于决策树方法的推特数据对印尼总统选举的意见挖掘
印度尼西亚是一个由总统领导的国家。总统的任期每五年民主选举一次。现任总统将于2024年结束任期。因此,在那一年,人民将举行直接大选,以确定2024年至2029年之间的总统。在印度尼西亚举行大选之前,这与每位总统候选人的支持者进行的竞选活动密切相关。该活动直接在村庄地点进行,并在社交媒体Twitter/Facebook/YouTube上进行。他在推特上的竞选文章分析起来令人兴奋。即使是现在,与2024年总统选举有关的推特上也有很多人表达了不同的意见。这项研究将研究某人的推文的情绪,以了解公众对2024年总统选举的声明。由此产生的情绪类别是积极的、消极的和中性的,与情绪类别相关的单词tweet将被可视化。然后,情感类别的结果将使用基于树的方法进行分类,即决策树。应用决策树方法生成的准确率为99.3%。决策树方法也比基于回归的方法好2.5%。
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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47
审稿时长
6 weeks
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