Implications of Deep Learning for Stock Market Forecasting

Main Article Content

Supendi
Devi Kumala
Maria Lusiana Yulianti

Abstract

This research explores the effectiveness of using deep learning in predicting stock market movements. This research uses rigorous methods to bring out the performance of deep learning models, compare them with traditional methods, and identify critical factors that influence stock market predictions. The research results show that deep learning models, especially LSTM and CNN-LSTM architectures, can achieve satisfactory levels of accuracy and outperform traditional methods by capturing patterns in complex stock market data. In addition, this research identifies external and internal factors that influence predictions of stock market movements. This research's practical and theoretical implications highlight the potential of deep learning in improving investment decision-making and understanding financial market dynamics. Recommendations for future research include exploration of advanced deep learning techniques, integration with traditional methods, emphasis on risk management strategies, continuous evaluation of model performance, and provision of training and education to encourage analysts and investors to adopt this technology. By implementing these recommendations, the potential of deep learning models in financial analysis can be optimized, ultimately improving market efficiency and investment returns.

Article Details

How to Cite
Supendi, Kumala, D., & Yulianti, M. L. (2024). Implications of Deep Learning for Stock Market Forecasting. International Journal Software Engineering and Computer Science (IJSECS), 4(1), 68–80. https://doi.org/10.35870/ijsecs.v4i1.2281
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Articles
Author Biographies

Supendi, Universitas Linggabuana PGRI Sukabumi

Management Study Program, Faculty of Social Economics, Universitas Linggabuana PGRI Sukabumi, Sukabumi City, West Java Province, Indonesia

Devi Kumala, Universitas Muhammadiyah Aceh

Digital Business Study Program, Faculty of Economics, Universitas Muhammadiyah Aceh, Banda Aceh City, Aceh Province, Indonesia

Maria Lusiana Yulianti, Universitas Winaya Mukti

Accounting Study Program, Faculty of Economics and Business, Universitas Winaya Mukti, Bandung City, West Java Province, Indonesia

References

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