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2021 | OriginalPaper | Buchkapitel

Stock Prices Prediction from Financial News Articles Using LSTM and XAI

verfasst von : Shilpa Gite, Hrituja Khatavkar, Shilpi Srivastava, Priyam Maheshwari, Neerav Pandey

Erschienen in: Proceedings of Second International Conference on Computing, Communications, and Cyber-Security

Verlag: Springer Singapore

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Abstract

The stock market is very complex and volatile. It is impacted by positive and negative sentiments which are based on media releases. The scope of the stock price analysis relies upon the ability to recognize the stock movements. It is based on technical fundamentals and understanding the hidden trends which the market follows. Stock price prediction (Vachhani et al in Mach Learn-Based Stock Market Anal Short Surv (2020) [1]) has consistently been an extremely dynamic field of exploration and research work. However, arriving at the ideal degree of precision is still an enticing challenge. In this paper, we are proposing a combined effort of using efficient machine learning techniques coupled with a deep learning technique—long short-term memory (LSTM) to use them to predict the stock prices with a high level of accuracy. Sentiments derived by users from news headlines have a tremendous effect on the buying and selling patterns of the traders as they easily get influenced by what they read. Hence, fusing one more dimension of sentiments along with technical analysis should improve the prediction accuracy. LSTM networks have proved to be a very useful tool to learn and predict temporal data having long-term dependencies. In our work, the LSTM model uses historical stock data along with sentiments from news items to create a better predictive model

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Literatur
2.
Zurück zum Zitat Titan A (2015) The efficient market hypothesis: review of specialized literature and empirical research. Proc Econ Fin 32:442–449 Titan A (2015) The efficient market hypothesis: review of specialized literature and empirical research. Proc Econ Fin 32:442–449
3.
Zurück zum Zitat Roondiwala M, Patel H, Varma S (2017) Predicting stock prices using LSTM 6(4):2015–2017 Roondiwala M, Patel H, Varma S (2017) Predicting stock prices using LSTM 6(4):2015–2017
4.
Zurück zum Zitat Mathews SM (2017) Dictionary and deep learning algorithms with applications to remote health monitoring systems. Univ. Delaware, Newark, DE, USA, Technical Report Mathews SM (2017) Dictionary and deep learning algorithms with applications to remote health monitoring systems. Univ. Delaware, Newark, DE, USA, Technical Report
5.
Zurück zum Zitat Kalyani J, Bharathi HN, Rao J (2016) Stock trend prediction using news sentiment analysis. Int J Comput Sci Inf Technol (IJCSIT) 8(3):67–76 Kalyani J, Bharathi HN, Rao J (2016) Stock trend prediction using news sentiment analysis. Int J Comput Sci Inf Technol (IJCSIT) 8(3):67–76
6.
Zurück zum Zitat Nayak A, Pai MM, Pai RM (2016) Prediction models for Indian stock market. Proc Comput Sci 89:441–449CrossRef Nayak A, Pai MM, Pai RM (2016) Prediction models for Indian stock market. Proc Comput Sci 89:441–449CrossRef
8.
Zurück zum Zitat Qun Z, Xu L, Zhang G (2017) LSTM neural network with emotional analysis for prediction of stock price. Eng Lett 25(2):167–175 Qun Z, Xu L, Zhang G (2017) LSTM neural network with emotional analysis for prediction of stock price. Eng Lett 25(2):167–175
9.
Zurück zum Zitat Vargas MR, de Lima BSLP, Evsukoff AG (2017) Deep learning for stock market prediction from financial news articles. In: 2017 IEEE international conference on computational intelligence and virtual environments for measurement systems and applications (CIVEMSA). IEEE, June 2017 Vargas MR, de Lima BSLP, Evsukoff AG (2017) Deep learning for stock market prediction from financial news articles. In: 2017 IEEE international conference on computational intelligence and virtual environments for measurement systems and applications (CIVEMSA). IEEE, June 2017
10.
11.
Zurück zum Zitat Hochreiter S, Schmidhuber J (1997) Long-short term memory. Neural Comput Hochreiter S, Schmidhuber J (1997) Long-short term memory. Neural Comput
12.
Zurück zum Zitat Greff K, Srivastava RK, Koutník J, Steunebrink BR (2017, Oct 4) LSTM: a search space odyssey Greff K, Srivastava RK, Koutník J, Steunebrink BR (2017, Oct 4) LSTM: a search space odyssey
13.
Zurück zum Zitat Radwan S What does explainable AI really mean? Radwan S What does explainable AI really mean?
14.
Zurück zum Zitat Shrikumar A, Greenside P, Shcherbina A, Kundaje A (2016) Not just a black box: learning important features through propagating activation differences Shrikumar A, Greenside P, Shcherbina A, Kundaje A (2016) Not just a black box: learning important features through propagating activation differences
15.
Zurück zum Zitat Doran D, Schulz S, Besold TR (2017) What does explainable ai really mean? A new conceptualization of perspectives. arXiv:1710.00794 Doran D, Schulz S, Besold TR (2017) What does explainable ai really mean? A new conceptualization of perspectives. arXiv:​1710.​00794
Metadaten
Titel
Stock Prices Prediction from Financial News Articles Using LSTM and XAI
verfasst von
Shilpa Gite
Hrituja Khatavkar
Shilpi Srivastava
Priyam Maheshwari
Neerav Pandey
Copyright-Jahr
2021
Verlag
Springer Singapore
DOI
https://doi.org/10.1007/978-981-16-0733-2_11

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