Analysis of Twitter Users Sentiment against the Covid-19 Outbreak Using the Backpropagation Method with Adam Optimization

T. Hendrawati, Christina Purnama Yanti
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引用次数: 2

Abstract

This research tries to take advantage of Twitter by analyzing Indonesian-language tweets that discuss the Covid-19 virus outbreak to find out what Twitter users think about the Covid-19 virus outbreak. This study tries to analyze sentiment to see opinions on Covid-19 tweets that contains Posittive, Negative or Neutral sentiments using Multi-layer Perceptron (MLP) using Backprogragation with Adam optimization. We collected 200 documents (tweets) in Indonesian about Covid-19 that were tweeted since November 2019 and then trained them to get our MLP Backpropagation model. Our model managed to get an accuracy of up to 70% with f1-scores for positive, negative, and neutral classes respectively 0.77, 0.75, and 0.5 from a maximum value of 1. This shows that our model is quite successful in carrying out the sentiment classification process for Indonesian tweets with the Covid-19 theme.
基于Adam优化的反向传播方法分析Twitter用户对新冠肺炎疫情的情绪
本研究试图通过分析讨论新冠病毒爆发的印尼语推文来利用推特,了解推特用户对新冠病毒爆发的看法。本研究试图利用多层感知器(MLP),利用亚当优化的反向编程,分析包含积极、消极或中性情绪的Covid-19推文的观点。我们收集了自2019年11月以来在印度尼西亚发布的关于Covid-19的200个文档(推文),然后对它们进行训练,以获得我们的MLP反向传播模型。我们的模型成功地获得了高达70%的准确率,正类、负类和中性类的f1得分分别为0.77、0.75和0.5,最大值为1。这表明我们的模型在对以Covid-19为主题的印度尼西亚推文进行情感分类过程中非常成功。
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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