Data Analysis Analisis Sentimen Publik Terhadap Sekolah Tatap Muka Saat Covid-19 Pada Twitter Menggunakan Metode Lexicon Based

Achmad Hari Mulyadi Muslimah
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Abstract

Lately the whole world is rampant hit by the Corona Virus outbreak. Indonesia is not spared from the spread of this virus, with the Covid-19 in Indonesia making many adverse impacts that arise such as in the social, tourism, economic and education fields. The Minister of Education and Culture issued a circular on March 24, 2020 which contains about the learning/teaching process will be done online or online to reduce the number of virus spread in schools, after online school trials there are still many shortcomings, for example inadequate internet access. Because it was felt that online learning was less effective, of course this policy invited a lot of public comments, especially on social media twitter. This study aims to find out the comments whether it falls into the classification of sentiments that have been dividen into 5 classes, namely very positive sentiment, positive sentiment, negative sentiment, very negative sentiment, and neutral as well as to know the percentage results of each class. Lexicon Based's research method uses vader sentiment. The percentage accuracy results of 3000 tweet data were 1.3% very positive, 6.04% positive, 3.9% negative, 0.54% very negative, and 88.23% neutral. Keywords: sentiment analysis, lexicon based, covid-19, pandemic, twitter
当Covid-19在Twitter上使用基于Lexicon的方法时,公众对学校的情绪分析数据
最近,全世界都受到冠状病毒爆发的严重打击。印尼也未能幸免,新冠肺炎疫情给印尼社会、旅游、经济、教育等领域带来诸多不利影响。教育和文化部长于2020年3月24日发布了一份通知,其中包含了学习/教学过程将在网上或在线完成,以减少病毒在学校传播的数量,经过在线学校试验,仍然存在许多缺点,例如互联网接入不足。由于人们认为在线学习效果较差,当然这一政策引起了很多公众的评论,尤其是在社交媒体twitter上。本研究的目的是了解这些评论是否属于情绪的分类,这些情绪被分为5类,即非常积极的情绪、积极的情绪、消极的情绪、非常消极的情绪和中性,并知道每一类的百分比结果。Lexicon Based的研究方法使用了维德情绪。3000条tweet数据的百分比准确率结果为非常正面1.3%,正面6.04%,负面3.9%,非常负面0.54%,中性88.23%。关键词:情感分析,基于词典,covid-19,流行病,twitter
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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