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Stock Price Forecasting with Deep Learning: A Comparative Study

Author

Listed:
  • Tej Bahadur Shahi

    (Central Queensland University, North Rockhampton, Rockhampton QLD 4702, Australia)

  • Ashish Shrestha

    (Central Department of Computer Science and Information Technology, Tribhuvan University, Kathmandu 44613, Nepal)

  • Arjun Neupane

    (Central Queensland University, North Rockhampton, Rockhampton QLD 4702, Australia)

  • William Guo

    (Central Queensland University, North Rockhampton, Rockhampton QLD 4702, Australia)

Abstract

The long short-term memory (LSTM) and gated recurrent unit (GRU) models are popular deep-learning architectures for stock market forecasting. Various studies have speculated that incorporating financial news sentiment in forecasting could produce a better performance than using stock features alone. This study carried a normalized comparison on the performances of LSTM and GRU for stock market forecasting under the same conditions and objectively assessed the significance of incorporating the financial news sentiments in stock market forecasting. This comparative study is conducted on the cooperative deep-learning architecture proposed by us. Our experiments show that: (1) both LSTM and GRU are circumstantial in stock forecasting if only the stock market features are used; (2) the performance of LSTM and GRU for stock price forecasting can be significantly improved by incorporating the financial news sentiments with the stock features as the input; (3) both the LSTM-News and GRU-News models are able to produce better forecasting in stock price equally; (4) the cooperative deep-learning architecture proposed in this study could be modified as an expert system incorporating both the LSTM-News and GRU-News models to recommend the best possible forecasting whichever model can produce dynamically.

Suggested Citation

  • Tej Bahadur Shahi & Ashish Shrestha & Arjun Neupane & William Guo, 2020. "Stock Price Forecasting with Deep Learning: A Comparative Study," Mathematics, MDPI, vol. 8(9), pages 1-15, August.
  • Handle: RePEc:gam:jmathe:v:8:y:2020:i:9:p:1441-:d:405069
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    References listed on IDEAS

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    Cited by:

    1. Tej Bahadur Shahi & Chiranjibi Sitaula & Arjun Neupane & William Guo, 2022. "Fruit classification using attention-based MobileNetV2 for industrial applications," PLOS ONE, Public Library of Science, vol. 17(2), pages 1-21, February.
    2. Illia Baranochnikov & Robert Ślepaczuk, 2022. "A comparison of LSTM and GRU architectures with novel walk-forward approach to algorithmic investment strategy," Working Papers 2022-21, Faculty of Economic Sciences, University of Warsaw.
    3. Harsimrat Kaeley & Ye QIAO & Nader BAGHERZADEH, 0000. "Support for Stock Trend Prediction Using Transformers and Sentiment Analysis," Proceedings of Economics and Finance Conferences 13815878, International Institute of Social and Economic Sciences.
    4. Li Rong Wang & Hsuan Fu & Xiuyi Fan, 2023. "Stock Price Predictability and the Business Cycle via Machine Learning," Papers 2304.09937, arXiv.org.
    5. Harsimrat Kaeley & Ye Qiao & Nader Bagherzadeh, 2023. "Support for Stock Trend Prediction Using Transformers and Sentiment Analysis," Papers 2305.14368, arXiv.org.
    6. Ilia Zaznov & Julian Kunkel & Alfonso Dufour & Atta Badii, 2022. "Predicting Stock Price Changes Based on the Limit Order Book: A Survey," Mathematics, MDPI, vol. 10(8), pages 1-33, April.
    7. Wai Khuen Cheng & Khean Thye Bea & Steven Mun Hong Leow & Jireh Yi-Le Chan & Zeng-Wei Hong & Yen-Lin Chen, 2022. "A Review of Sentiment, Semantic and Event-Extraction-Based Approaches in Stock Forecasting," Mathematics, MDPI, vol. 10(14), pages 1-20, July.
    8. Changzhi Li & Dandan Liu & Mao Wang & Hanlin Wang & Shuai Xu, 2023. "Detection of Outliers in Time Series Power Data Based on Prediction Errors," Energies, MDPI, vol. 16(2), pages 1-19, January.

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