Iraqi Stock Market Prediction Using Artificial Neural Network and Long Short-Term Memory

Authors

  • Sama Hayder Abdulhussein AlHakeem Technical College of Management - Baghdad, Middle Technical University, Baghdad, Iraq.
  • Nashaat Jasim Al-Anber Technical College of Management - Baghdad, Middle Technical University, Baghdad, Iraq.
  • Hayfaa Abdulzahra Atee Technical Institute for Administration / Ressafa, Middle Technical University, Baghdad, Iraq
  • Mahmod Muhamad Amrir University of Jeddah, AlKamil, Kingdom of Saudi Arabia

DOI:

https://doi.org/10.51173/jt.v5i1.846

Keywords:

Iraqi Stock Market, LSTM, Stock Market Prediction, ANN, Deep Learning, Mean Square Error

Abstract

Stock prediction is one of the most important issues on which the investor relies in building his investment decisions and the financial literature has relied heavily on predicting future events because of its exceptional importance in financial work, after which profit or loss is determined, and since money dealers are eager to profit, the researchers have devoted techniques to forecast as providing the tools to achieve this. The choice of the proper model of time series data affects the precision of the predictions, and stock market data is typically random and turbulent for various industries. To obtain forecast models of stock market data that can accurately portray reality and obtain future forecasts, these models must take all data considerations from linear and none linear trends, different influences, and other data factors, hence the research problem of obtaining a method that gives predictions of Iraq's stock market indicators that are accurate and reliable in stock analysis. In this paper, two models were proposed to predict the Iraqi stock markets index through the use of artificial neural networks (ANN) and a long short-term memory (LSTM) algorithm where Iraqi stock market data were used from 2017 to 2021 and good results were achieved in the prediction where the long short-term memory (LSTM) algorithm reached a mean square error (MSE) rate of as little as 0.0016 while the artificial neural network (ANN) algorithm reached error rate 0.0055.

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Author Biography

Mahmod Muhamad Amrir, University of Jeddah, AlKamil, Kingdom of Saudi Arabia

College of Arts & Science

References

Gandhmal, Dattatray P., and K. Kumar. "Systematic analysis and review of stock market prediction techniques." Computer Science Review 34 (2019): 100190.‏

Nabipour, Mojtaba, et al. "Deep learning for stock market prediction." Entropy 22.8 (2020): 840.‏

Pang, Xiongwen, et al. "An innovative neural network approach for stock market prediction." The Journal of Supercomputing 76.3 (2020): 2098-2118.‏

Jiang, Weiwei. "Applications of deep learning in stock market prediction: recent progress." Expert Systems with Applications 184 (2021): 115537.‏

Sharma, Ashish, Dinesh Bhuriya, and Upendra Singh. "Survey of stock market prediction using machine learning approach." 2017 International conference of electronics, communication and aerospace technology (ICECA). Vol. 2. IEEE, 2017.‏

Gupta, Aditya, and Bhuwan Dhingra. "Stock market prediction using hidden markov models." 2012 Students Conference on Engineering and Systems. IEEE, 2012.‏

Thakkar, Ankit, and Kinjal Chaudhari. "Fusion in stock market prediction: a decade survey on the necessity, recent developments, and potential future directions." Information Fusion 65 (2021): 95-107.‏

Iraq Stock Market Main Page, http://www.isx-iq.net/isxportal/portal/homePage.html

Jain, Sneh, Roopam Gupta, and Asmita A. Moghe. "Stock price prediction on daily stock data using deep neural networks." 2018 International conference on advanced computation and telecommunication (ICACAT). IEEE, 2018.‏

Keshavarz, Mohammad Hossein, Mohammad Reza Feylizadeh, and Ayad Hendalianpour. "Presenting a model for predicting the Tehran Stock Exchange Index using ANFIS and fuzzy regression." Journal of New Researches in Mathematics 6.25 (2020): 167-196.‏

Bhattacharjee, Animesh, and Joy Das. "Examining the Nexus between Indian and US Stock Market: A Time Series Analysis." Available at SSRN 3560386 (2020).‏

Shaikh, Ashfaq, et al. "Stock Market Prediction Using Machine Learning." Proceedings of International Conference on Intelligent Computing, Information, and Control Systems. Springer, Singapore, 2021.‏

Christy Jeba Malar, A., et al. "Deep Learning-based Stock Market Prediction." Proceedings of International Conference on Recent Trends in Computing. Springer, Singapore, 2022.‏

Moghaddam, Amin Hedayati, Moein Hedayati Moghaddam, and Morteza Esfandyari. "Stock market index prediction using artificial neural network." Journal of Economics, Finance, and Administrative Science 21.41 (2016): 89-93.‏

Naik, Nagaraj, and Biju R. Mohan. "Optimal feature selection of technical indicator and stock prediction using machine learning technique." International Conference on Emerging Technologies in Computer Engineering. Springer, Singapore, 2019.‏

Selvin, Sreelekshmy, et al. "Stock price prediction using LSTM, RNN, and CNN-sliding window model." 2017 international conference on advances in computing, communications, and informatics (icacci). IEEE, 2017.‏

Shin, Dong-Ha, Kwang-Ho Choi, and Chang-Bok Kim. "Deep learning model for prediction rate improvement of stock price using RNN and LSTM." The Journal of Korean Institute of Information Technology 15.10 (2017): 9-16.‏

Chen, Weiling, et al. "Leveraging social media news to predict stock index movement using RNN-boost." Data & Knowledge Engineering 118 (2018): 14-24.‏

Singh, Ritika, and Shashi Srivastava. "Stock prediction using deep learning." Multimedia Tools and Applications 76.18 (2017): 18569-18584.‏

Kumar, Krishna, Md Haider, and Tanwir Uddin. "Enhanced prediction of intra-day stock market using metaheuristic optimization on RNN–LSTM network." New Generation Computing 39.1 (2021): 231-272.

Artificial Neural Network Structure

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Published

2023-04-03

How to Cite

Sama Hayder Abdulhussein AlHakeem, Nashaat Jasim Al-Anber, Hayfaa Abdulzahra Atee, & Mahmod Muhamad Amrir. (2023). Iraqi Stock Market Prediction Using Artificial Neural Network and Long Short-Term Memory. Journal of Techniques, 5(1), 156–163. https://doi.org/10.51173/jt.v5i1.846

Issue

Section

Management

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