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  • 한국과학기술정보연구원(KISTI) 서울분원 대회의실(별관 3층)
  • 2024년 07월 03일(수) 13:30
 

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Sentiment Analysis on Indonesia Economic Growth using Deep Learning Neural Network Method

Sentiment Analysis on Indonesia Economic Growth using Deep Learning Neural Network Method

The Journal of Industrial Distribution & Business(JIDB) / The Journal of Industrial Distribution & Business, (E)2233-5382
2022, v.13 no.6, pp.9-18
https://doi.org/https://doi.org/10.13106/jidb.2022.vol13.no6.9
KRISMAWATI, Dewi (Directorate of Statistical Analysis and Development, BPS Statistics Indonesia)
MARIEL, Wahyu Calvin Frans (Directorate of Statistical Analysis and Development, BPS Statistics Indonesia)
ARSYI, Farhan Anshari (Directorate of Statistical Analysis and Development, BPS Statistics Indonesia)
PRAMANA, Setia (Department of Computational Statistics Politeknik Statistika STIS)
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Abstract

Purpose: The government around the world is still highlighting the effect of the new variant of Covid-19. The government continues to make efforts to restore the economy through several programs, one of them is National Economic Recovery. This program is expected to increase public and investor confidence in handling Covid-19. This study aims to capture public sentiment on the economic growth rate in Indonesia, especially during the third wave of the omicron variant of the covid-19 virus, that is at the time in the fourth quarter of 2021. Research design, data, and methodology: The approach used in this research is to collect crowdsourcing data from twitter, in the range of 1st to 10th October 2021. The analysis is done by building model using Deep Learning Neural Network method. Results: The result of the sentiment analysis is that most of the tweets have a neutral sentiment on the Economic Growth discussion. Several central figures who discussed were Minister of Coordinating for the Economy of Indonesia, Minister of State-Owned Enterprises. Conclusions: Data from social media can be used by the government to capture public responses, especially public sentiment regarding economic growth. This can be used by policy makers, for example entrepreneurs to anticipate economic movements under certain conditions.

keywords
Sentiment, Analysis, Economic, Growth, Neural Network

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The Journal of Industrial Distribution & Business(JIDB)