Sentiment Analysis and Topic Modeling of Citizen Satisfaction with the Indonesian Government in Handling a Pandemic

Siti Nurmalasari, A. Hidayanto, Labibah Alya Huwaida, Hapsari Wulandari
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Abstract

When the COVID hit the world, many countries issued policies to stop the spread of the virus. In Indonesia, various opinions and surveys have emerged regarding citizen satisfaction with the government's performance in handling the pandemic. But the survey method still has many weaknesses, for example: bias from the researcher, lack of confidentiality, hello effect, and so on. The purpose of this study is to classify this phenomenon into positive and negative sentiments taken from Twitter data. Every record is pre-processed to clean the data. Data labelling using a lexicon consisting of positive or negative polarities. Sentiment classification using Support Vector Machine (SVM). Each positive and negative sentiment will be processed using Latent Dirichlet Allocation (LDA) method to find out the interpretation of the main topics that are often discussed, then made into a visualization using a word cloud. The best model obtained was the model with TF-IDF feature extraction with a precision value of 0.87, a recall of 0.95, an accuracy of 0.89, and an F1-measure of 0.93. Our findings indicate that people are more likely to be satisfied with the performance of the government's fight against COVID than with the policies they introduce. People are also satisfied because they can feel mudik (go back to hometown) again after two years of the pandemic. Dissatisfaction comes from people who think that there is a business game in vaccine policy as well as the government's lack of transparency regarding the number of COVID cases.
公民对印尼政府应对疫情满意度的情感分析与话题建模
当新冠病毒袭击世界时,许多国家出台了阻止病毒传播的政策。在印度尼西亚,关于公民对政府应对疫情表现的满意度,出现了各种意见和调查。但是这种调查方法仍然存在许多不足,例如:研究者的偏见、缺乏保密性、hello效应等。本研究的目的是将这种现象分为积极情绪和消极情绪,这些情绪来自Twitter数据。每条记录都经过预处理以清理数据。使用由正极性或负极性组成的词典进行数据标记。基于支持向量机的情感分类。每个积极和消极情绪将使用潜在狄利克雷分配(LDA)方法进行处理,以找出经常讨论的主要主题的解释,然后使用词云进行可视化。得到的最佳模型是TF-IDF特征提取模型,其精度值为0.87,召回率为0.95,准确度为0.89,f1测度为0.93。我们的研究结果表明,人们更可能对政府抗击新冠病毒的表现感到满意,而不是对政府出台的政策感到满意。经历了2年的大流行后,又有了“返乡”的感觉。人们认为疫苗政策中存在商业游戏,政府对新冠肺炎患者数量缺乏透明度,这些都是不满的原因。
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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