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

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,...

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Main Authors: Theresia Hendrawati, Christina Purnama Yanti
Format: Article
Language:English
Published: Universitas Udayana 2021-02-01
Series:Journal of Electrical, Electronics and Informatics
Online Access:https://ojs.unud.ac.id/index.php/JEEI/article/view/65626
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spelling doaj-33233d0df52e414995aaf560ea9cd3112021-03-02T05:13:31ZengUniversitas UdayanaJournal of Electrical, Electronics and Informatics2549-83042622-03932021-02-01511410.24843/JEEI.2021.v05.i01.p0165626Analysis of Twitter Users Sentiment against the Covid-19 Outbreak Using the Backpropagation Method with Adam OptimizationTheresia Hendrawati0Christina Purnama YantiSTMIK STIKOM IndonesiaThis 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.https://ojs.unud.ac.id/index.php/JEEI/article/view/65626
collection DOAJ
language English
format Article
sources DOAJ
author Theresia Hendrawati
Christina Purnama Yanti
spellingShingle Theresia Hendrawati
Christina Purnama Yanti
Analysis of Twitter Users Sentiment against the Covid-19 Outbreak Using the Backpropagation Method with Adam Optimization
Journal of Electrical, Electronics and Informatics
author_facet Theresia Hendrawati
Christina Purnama Yanti
author_sort Theresia Hendrawati
title Analysis of Twitter Users Sentiment against the Covid-19 Outbreak Using the Backpropagation Method with Adam Optimization
title_short Analysis of Twitter Users Sentiment against the Covid-19 Outbreak Using the Backpropagation Method with Adam Optimization
title_full Analysis of Twitter Users Sentiment against the Covid-19 Outbreak Using the Backpropagation Method with Adam Optimization
title_fullStr Analysis of Twitter Users Sentiment against the Covid-19 Outbreak Using the Backpropagation Method with Adam Optimization
title_full_unstemmed Analysis of Twitter Users Sentiment against the Covid-19 Outbreak Using the Backpropagation Method with Adam Optimization
title_sort analysis of twitter users sentiment against the covid-19 outbreak using the backpropagation method with adam optimization
publisher Universitas Udayana
series Journal of Electrical, Electronics and Informatics
issn 2549-8304
2622-0393
publishDate 2021-02-01
description 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.
url https://ojs.unud.ac.id/index.php/JEEI/article/view/65626
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AT christinapurnamayanti analysisoftwitteruserssentimentagainstthecovid19outbreakusingthebackpropagationmethodwithadamoptimization
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