Financial Forecasting via Deep-Learning and Machine-Learning Tools over Two-Dimensional Objects Transformed from Time Series
- Alessandro Baldo 2
- Alfredo Cuzzocrea 13
- Edoardo Fadda 24
- Pablo G. Bringas 5
- 1 LORIA (Nancy, France)
- 2 ISIRES (Torino, Italy)
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3
University of Calabria
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4
Polytechnic University of Turin
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5
Universidad de Deusto
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- Hugo Sanjurjo González (coord.)
- Iker Pastor López (coord.)
- Pablo García Bringas (coord.)
- Héctor Quintián (coord.)
- Emilio Corchado (coord.)
Éditorial: Springer International Publishing AG
ISBN: 978-3-030-86271-8, 978-3-030-86270-1
Année de publication: 2021
Pages: 550-563
Congreso: Hybrid Artificial Intelligent Systems (HAIS) (16. 2021. Bilbao)
Type: Communication dans un congrès
Résumé
In this study, we propose a deeper analysis on the algorithmic treatment of financial time series, with a focus on Forex markets’ applications. The relevant aspects of the paper refers to a more beneficial data arrangement, proposed into a two-dimensional objects and to the application of a Temporal Convolutional Neural Network model, representing a more than valid alternative to Recurrent Neural Networks. The results are supported by expanding the comparison to other more consolidated deep learning models, as well as with some of the most performing Machine Learning methods. Finally, a financial framework is proposed to test the real effectiveness of the algorithms.