UTILIZATION OF INDOBERT FOR SENTIMENT CLASSIFICATION OF STOCK NEWS AND CORRELATION ANALYSIS WITH PRICE MOVEMENTS ON THE INDONESIA STOCK EXCHANGE
This study aims to classify stock news sentiment using the IndoBERT model and analyze its correlation with stock price movements on the Indonesia Stock Exchange. The data used was collected through web scraping from news portals such as Emiten News, Liputan6, and Detik.com, comprising 2,857 stock...
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Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/82436 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | This study aims to classify stock news sentiment using the IndoBERT model and
analyze its correlation with stock price movements on the Indonesia Stock
Exchange. The data used was collected through web scraping from news portals
such as Emiten News, Liputan6, and Detik.com, comprising 2,857 stock news
articles. After undergoing labeling and preprocessing, the data was used to train
various variants of the IndoBERT model.
Experimental results show that the IndoBERT-large-p1 model provides the best
performance with an accuracy of 0.78, followed by the IndoBERT-lite-large-p1,
IndoBERT-base-p1, and IndoBERT-lite-base-p1 models. In the correlation
analysis between stock news sentiment and stock price movements, the sector
with the highest correlation was the basic materials sector, with a hit rate of 0.60
and a Pearson correlation of 0.389. This study concludes that the IndoBERT
model can be effectively used for stock news sentiment analysis and demonstrates
a correlation between news sentiment and stock price movements in the
Indonesian stock market. However, the limited amount of data for each stock
sector is a constraint in achieving higher correlation values. |
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