PERFORMANCE EVALUATION OF STOCK PREDICTION MODELS USING EMAGRU

Erizal ERIZAL


Universitas Respati Yogyakarta, Faculty of Science and Technology, Department of Information System (Indonesia)

Mohammad DIQI

diqi@respati.ac.id
Universitas Respati Yogyakarta, Faculty of Science and Technology, Department of Informatics (Indonesia)
https://orcid.org/0000-0002-9012-9080

Abstract

Stock prediction is an exciting issue and is very much needed by investors and business people to develop their assets. The main difficulties in predicting stock prices are dynamic movements, high volatility, and noises caused by company performance and external influences. The traditional method used by investors is the technical analysis based on statistics, valuation of previous stock portfolios, and news from the mass media and social media. Deep learning can predict stock price movements more accurately than traditional methods. As a solution to the issue of stock prediction, we offer the Exponential Moving Average Gated Recurrent Unit (EMAGRU) model and demonstrate its utility. The EMAGRU architecture contains two stacked GRUs arranged in parallel. The inputs and outputs are the EMA10 and EMA20, formed from the closing prices over ten years. We also combine the AntiReLU and ReLU activation functions into the model so that EMAGRU has 6 model variants. Our proposed model produced low losses and high accuracy. RMSE, MEPA, MAE, R2 and  were 0.0060, 0.0064, 0.0050, and 0.9976 for EMA10, and 0.0050, 0.0058, 0.0045, and 0.9982 for EMA20, respectively.


Keywords:

Stock Prediction, Deep Learning, GRU, EMA, ReLU, AntiReLU

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Published
2023-09-30

Cited by

ERIZAL, E., & DIQI, M. (2023). PERFORMANCE EVALUATION OF STOCK PREDICTION MODELS USING EMAGRU. Applied Computer Science, 19(3), 160–173. https://doi.org/10.35784/acs-2023-30

Authors

Erizal ERIZAL 

Universitas Respati Yogyakarta, Faculty of Science and Technology, Department of Information System Indonesia

Authors

Mohammad DIQI 
diqi@respati.ac.id
Universitas Respati Yogyakarta, Faculty of Science and Technology, Department of Informatics Indonesia
https://orcid.org/0000-0002-9012-9080

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