Analysis of Public Sentiment Towards Goverment Efforts to Break the
Chain of Covid-19 Transmission in Indonesia Using CNN and
Bidirectional LSTM
Dublin Core
Title
Analysis of Public Sentiment Towards Goverment Efforts to Break the
Chain of Covid-19 Transmission in Indonesia Using CNN and
Bidirectional LSTM
Chain of Covid-19 Transmission in Indonesia Using CNN and
Bidirectional LSTM
Subject
: COVID-19, Deep Learning, Bidirectional LSTM, CNN
Description
COVID-19 is a new disease that has a negatively impacts in Indonesia, so the government is taking several measures to
suppress the spread of COVID-19, such as new normal, social distancing, health protocols fines, and COVID-19 vaccination.
The government's handling efforts have reaped a variety of negative to positive responses from the public on social media, so
this study aims to determine the effectiveness of the government's efforts by analyzing public sentiment using the Deep Learning
method with 1,875 training datasets consisting of four types government efforts and taken from various media social. The use
of Deep Learning begins with testing several Deep Learning architectures to determine the best architecture for predicting
data. The architectures tested include CNN and Bi-LSTM, where from these tests, Bi-LSTM outperforms CNN with the best
performance achieving the accuracy of 97.34% and 97.33% for precision, recall, and F1-score. The results of public sentiment
analysis show that social distancing efforts are considered the most effective by obtaining the most positive sentiments by
33.93%, while the effort to health protocol fines is considered lacking because it obtains the most negative sentiment of 35.64%,
so the government must continue to enforce social distancing and optimize other efforts that are still considered ineffective
suppress the spread of COVID-19, such as new normal, social distancing, health protocols fines, and COVID-19 vaccination.
The government's handling efforts have reaped a variety of negative to positive responses from the public on social media, so
this study aims to determine the effectiveness of the government's efforts by analyzing public sentiment using the Deep Learning
method with 1,875 training datasets consisting of four types government efforts and taken from various media social. The use
of Deep Learning begins with testing several Deep Learning architectures to determine the best architecture for predicting
data. The architectures tested include CNN and Bi-LSTM, where from these tests, Bi-LSTM outperforms CNN with the best
performance achieving the accuracy of 97.34% and 97.33% for precision, recall, and F1-score. The results of public sentiment
analysis show that social distancing efforts are considered the most effective by obtaining the most positive sentiments by
33.93%, while the effort to health protocol fines is considered lacking because it obtains the most negative sentiment of 35.64%,
so the government must continue to enforce social distancing and optimize other efforts that are still considered ineffective
Creator
Gusti Agung Mayun Kukuh Jaluwana1
, Gusti Made Arya Sasmita2
, I Made Agus Dwi Suarjaya3
, Gusti Made Arya Sasmita2
, I Made Agus Dwi Suarjaya3
Publisher
Universitas Udayana
Date
: 22-08-2022
Contributor
Fajar bagus W
Format
PDF
Language
Indonesia
Type
Text
Files
Collection
Citation
Gusti Agung Mayun Kukuh Jaluwana1
, Gusti Made Arya Sasmita2
, I Made Agus Dwi Suarjaya3, “Analysis of Public Sentiment Towards Goverment Efforts to Break the
Chain of Covid-19 Transmission in Indonesia Using CNN and
Bidirectional LSTM,” Repository Horizon University Indonesia, accessed June 6, 2025, https://repository.horizon.ac.id/items/show/9201.
Chain of Covid-19 Transmission in Indonesia Using CNN and
Bidirectional LSTM,” Repository Horizon University Indonesia, accessed June 6, 2025, https://repository.horizon.ac.id/items/show/9201.