Research Article
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RGBSticks : A New Deep Learning Based Framework for Stock Market Analysis and Prediction

Year 2020, Volume: 1 Issue: 2, 78 - 85, 29.12.2020

Abstract

We present a novel intuitive graphical representation for daily stock prices, which we refer as RGBSticks, a variation of classical candle sticks. This representation allows the usage of complex deep learning based techniques, such as deep convolutional autoencoders and deep convolutional generative adversarial networks to produce insightful visualizations for market's past and future states. We believe RGBStick representation has great potential to integrate human decision process and deep learning for stock market analysis and forecasting. The traders who are highly familiar with candlesticks are able to evaluate the results generated by deep learning algorithms by inspecting the varying color shades in a compact, instinctual and rapid fashion

References

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  • Yoshihara A, Fujikawa K, Seki K, Uehara, K. Predicting stock market trends by recurrent deep neural networks. European Journal of Operational Research 2018; 270 (2) : 654–669
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  • Chen J, Tsai Y. Encoding candlesticks as images for pattern classification using convolutional neural networks. Financial Innovation 2020; 6 : 1–19
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Year 2020, Volume: 1 Issue: 2, 78 - 85, 29.12.2020

Abstract

References

  • Morris G L. Candlestick Charting Explained: Timeless Techniques for Trading Stocks and Futures: Timeless Techniques for Trading stocks and Sutures; McGraw Hill Professional 2016.
  • Nison, S. Japanese candlestick charting techniques: a contemporary guide to the ancient investment techniques of the Far East; Penguin 2001.
  • Lewicki P, Czyzewska M, Hoffman H. Journal of Experimental Psychology Learning, Memory, and Cognition.; 13: 9 523 x. American Psychological Association 1987.
  • Berti A, Rizzolatti G. Visual processing without awareness: Evidence from unilateral neglect. Journal of cognitive neuroscience 1992; 4 (4) : 345-351
  • Chong E, Han C, Park F C. Deep learning networks for stock market analysis and prediction: Methodology, data representations, and case studies. Expert Systems with Applications 2017; 83 : 187-205
  • Fischer T, Krauss C. Deep learning with long short-term memory networks for financial market predictions. European Journal of Operational Research 2018; 270 (2) : 654–669
  • Yoshihara A, Fujikawa K, Seki K, Uehara, K. Predicting stock market trends by recurrent deep neural networks. European Journal of Operational Research 2018; 270 (2) : 654–669
  • Hu Z, Liu W, Bian J, Liu X, Liu T. Listening to chaotic whispers: A deep learning framework for news-oriented stock trend prediction. Proceedings of the eleventh ACM international conference on web search and data mining 20 2018; 261–269
  • Chen J, Tsai Y. Encoding candlesticks as images for pattern classification using convolutional neural networks. Financial Innovation 2020; 6 : 1–19
  • Zhang H, Goodfellow I, Metaxas D, Odena A. Self-attention generative adversarial networks. International Confer4 ence on Machine Learning 2019; 7354–7363
  • Radford A, Metz L, Chintala S. Unsupervised representation learning with deep convolutional generative adversarial networks. arXiv preprint arXiv:1511.06434 2015.
  • Goodfellow I, Pouget-Abadie J, Mirza M, Xu B, Warde-Farley D, Ozair S, Courville A, Bengio Y. Generative 8 adversarial nets. Advances in neural information processing systems 2014; 2672–2680
There are 12 citations in total.

Details

Primary Language English
Subjects Artificial Intelligence
Journal Section Research Articles
Authors

Eren Unlu 0000-0001-5380-6305

Publication Date December 29, 2020
Submission Date September 22, 2020
Published in Issue Year 2020 Volume: 1 Issue: 2

Cite

APA Unlu, E. (2020). RGBSticks : A New Deep Learning Based Framework for Stock Market Analysis and Prediction. Journal of Soft Computing and Artificial Intelligence, 1(2), 78-85.
AMA Unlu E. RGBSticks : A New Deep Learning Based Framework for Stock Market Analysis and Prediction. JSCAI. December 2020;1(2):78-85.
Chicago Unlu, Eren. “RGBSticks : A New Deep Learning Based Framework for Stock Market Analysis and Prediction”. Journal of Soft Computing and Artificial Intelligence 1, no. 2 (December 2020): 78-85.
EndNote Unlu E (December 1, 2020) RGBSticks : A New Deep Learning Based Framework for Stock Market Analysis and Prediction. Journal of Soft Computing and Artificial Intelligence 1 2 78–85.
IEEE E. Unlu, “RGBSticks : A New Deep Learning Based Framework for Stock Market Analysis and Prediction”, JSCAI, vol. 1, no. 2, pp. 78–85, 2020.
ISNAD Unlu, Eren. “RGBSticks : A New Deep Learning Based Framework for Stock Market Analysis and Prediction”. Journal of Soft Computing and Artificial Intelligence 1/2 (December 2020), 78-85.
JAMA Unlu E. RGBSticks : A New Deep Learning Based Framework for Stock Market Analysis and Prediction. JSCAI. 2020;1:78–85.
MLA Unlu, Eren. “RGBSticks : A New Deep Learning Based Framework for Stock Market Analysis and Prediction”. Journal of Soft Computing and Artificial Intelligence, vol. 1, no. 2, 2020, pp. 78-85.
Vancouver Unlu E. RGBSticks : A New Deep Learning Based Framework for Stock Market Analysis and Prediction. JSCAI. 2020;1(2):78-85.