Prediction of future stock price using recurrent neural network / Nur Izzah Atirah Mohd Ikhram ... [et al.]

The stock market can affect businesses in various ways, as the rise and fall of a company's share price values impact its market capitalization and overall market value. However, forecasting stock market returns is challenging because financial stock markets are unpredictable and non-linear, wi...

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Main Authors: Mohd Ikhram, Nur Izzah Atirah, Shafii, Nor Hayati, Fauzi, Nur Fatihah Fauzi, Md Nasir, Diana Sirmayunie, Mohd Nor, Nor Azriani
Format: Article
Language:English
Published: UiTM Cawangan Perlis 2023
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Online Access:https://ir.uitm.edu.my/id/eprint/86883/1/86883.pdf
https://ir.uitm.edu.my/id/eprint/86883/
https://crinn.conferencehunter.com/index.php/jcrinn
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Summary:The stock market can affect businesses in various ways, as the rise and fall of a company's share price values impact its market capitalization and overall market value. However, forecasting stock market returns is challenging because financial stock markets are unpredictable and non-linear, with factors such as market trends, supply and demand ratios, global economies, and public opinion affecting stock prices. With the advent of artificial intelligence and increased processing power, intelligent prediction techniques have become more effective in forecasting stock values. This study proposes a Recurrent Neural Network (RNN) model that uses a deep learning machine to predict stock prices. The process includes five stages: data analysis, dataset preparation, network design, network training, and network testing. The accuracy of the model is determined by the mean square error (MSE) and root mean square error (RMSE), which are 1.24 and 1.12, respectively. The predicted closing price is then compared to the actual closing price to assess the accuracy of the model. Finally, it is suggested that this approach can also be used to forecast other volatile time-series data