Academic Journal

Indonesian Stock Price Prediction Using Neural Basis Expansion Analysis for Interpretable Time Series Method

Λεπτομέρειες βιβλιογραφικής εγγραφής
Τίτλος: Indonesian Stock Price Prediction Using Neural Basis Expansion Analysis for Interpretable Time Series Method
Συγγραφείς: Zein, Muhamad Harun, Yudistira, Novanto, Adikara, Putra Pandu
Πηγή: Journal of ICT, Vol 23, Iss 3 (2024)
Στοιχεία εκδότη: UUM Press, Universiti Utara Malaysia, 2024.
Έτος έκδοσης: 2024
Θεματικοί όροι: neural basis expansion analysis for interpretable time series, TA Engineering (General). Civil engineering (General), stock price, Information technology, Prediction, T58.5-58.64, mean absolute percentage error
Περιγραφή: The stock market is an attractive investment venue for many individuals and companies. However, unexpected share price fluctuations can cause significant financial losses. In stock investment, predicting stock price movements is the most frequently discussed topic because it allows investors to make the right investment decisions to make big profits. Therefore, a model is needed to predict future stock prices, one strategy for maximising investment profits. New state-of-the-art deep learning architectures for time series forecasting are being developed yearly, making them more accurate than ever. The most commonly used network for such a solution is Long Short-Term Memory (LSTM) architecture, but it has limitations such as long training time and interpretability. This study aims to evaluate another state-of-theart solution, Neural Basis Expansion Analysis for Interpretable Time Series (N-BEATS), in comparison with LSTM by utilising historical data of PT Bank Central Asia Tbk (one of the banking companies in Indonesia) from 25 March 2013 to 21 March 2023. N-BEATS is a relatively new variable method that can produce accurate predictions using neural networks. This architecture has advantages such as interpretability, seamless applicability across diverse target domains without requiring modifications, and fast training. Based on tests carried out with prediction errors measured using the Mean Average Percentage Error (MAPE), it was found that the N-BEATS model outperformed the LSTM model with a MAPE value of 1.05 percent. In conclusion, this research shows the use of a new method of deep learning algorithms to predict stock prices, which contributes to facilitating stock buying and selling decisions by investors.
Τύπος εγγράφου: Article
Περιγραφή αρχείου: application/pdf
ISSN: 2180-3862
1675-414X
DOI: 10.32890/jict2024.23.3.1
Σύνδεσμος πρόσβασης: https://doaj.org/article/8e83d4d494c04b96ae4451551679d45b
Rights: CC BY
Αριθμός Καταχώρησης: edsair.doi.dedup.....327999dbe94d45b294b9c89be1d4975e
Βάση Δεδομένων: OpenAIRE
Περιγραφή
ISSN:21803862
1675414X
DOI:10.32890/jict2024.23.3.1