Data Science and Applications

Data Science and Applications

Stock Market Value Prediction using Deep Learning

Yazarlar: Seyda Kalyoncu, Akhtar Jamil, Enes Karataş, Jawad Rasheed, Chawki Djeddi

Cilt 3 , Sayı 2 , 2020 , Sayfalar 10-14

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Özet: The stock market is a key indicator of the economic conditions of a country. Stock exchange provides a neutral ground for brokers and companies to invest. Due to high investment return, people tend to invest in stock markets rather than traditional banks. However, there is high risk is investment in stock markets due to high fluctuations in exchange rates. Therefore, developing a highly robust stock prediction system can help investors to make a better decision about investment. In this study, a deep learning-based approach is applied on the stock historical data to predict the future market value. Specifically, we used Long-Short Term Memory (LSTM) for prediction of stock value of five well known Turkish companies in the stock market. As a result of RMSE, MSE accuracy tests made using these data, it has been seen that stock market prediction can be made successfully with LSTM.  


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BibTex
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@article{2020, title={Stock Market Value Prediction using Deep Learning}, volume={3}, number={10–14}, publisher={Data Science and Applications}, author={Seyda Kalyoncu, Akhtar Jamil, Enes Karataş, Jawad Rasheed, Chawki Djeddi}, year={2020} }
APA
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Seyda Kalyoncu, Akhtar Jamil, Enes Karataş, Jawad Rasheed, Chawki Djeddi. (2020). Stock Market Value Prediction using Deep Learning (Vol. 3). Vol. 3. Data Science and Applications.
MLA
KOPYALA
Seyda Kalyoncu, Akhtar Jamil, Enes Karataş, Jawad Rasheed, Chawki Djeddi. Stock Market Value Prediction Using Deep Learning. no. 10–14, Data Science and Applications, 2020.