The application of artificial neural networks to forecast financial time series

Author:

González-Cortés D1,Onieva E2,Pastor I3,Wu J4

Affiliation:

1. NEOMA Business School , rue du Maréchal Juin, Mont Saint Aignan Cedex 76825, France, daniel-alejandro.gonzalez-cortes.20@neoma-bs.com

2. Faculty of Engineering , University of Deusto, 48007, Bilbao, Spain, enrique.onieva@deusto.es

3. Faculty of Engineering , University of Deusto, 48007, Bilbao, Spain, iker.pastor@deusto.es

4. NEOMA Business School , rue du Maréchal Juin, Mont Saint Aignan Cedex 76825, France, jian.wu@neoma-bs.fr

Abstract

Abstract The amount of information that is produced on a daily basis in the financial markets is vast and complex; consequently, the development of systems that simplify decision-making is an essential endeavor. In this article, several intelligent systems are proposed and tested to predict the closing price of the IBEX 35 index using more than ten years of historical data and five distinct architectures for neural networks. A multi-layer perceptron was the first step, followed by a simple recurrent neural network, a gated recurrent unit network and two long-short-term memory (LSTM) networks. The results of the analyses performed on these models have demonstrated a powerful capacity for prediction. Additionally, the findings of this research point to the fact that the application of intelligent systems can simplify the decision-making process in financial markets, which is a substantial advantage. Furthermore, by comparing the predicted outcome errors between the models, the LSTM presents the lowest error with a higher computational time in the training phase. The LSTM was able to accurately forecast the closing price of the day as well as the price for the following one and two days in advance. In conclusion, the empirical results demonstrated that these models could accurately predict financial data for trading purposes and that the application of intelligent systems, such as the LSTM network, represents a promising advancement in financial technology.

Publisher

Oxford University Press (OUP)

Reference27 articles.

1. A state-of-the-art survey on deep learning theory and architectures;Alom;Electronics,2019

2. Ask the gru;Bansal,2016

3. Financial contagion and the real economy;Baur;Journal of Banking & Finance,2012

4. Learning long-term dependencies with gradient descent is difficult;Bengio;IEEE Transactions on Neural Networks,1994

5. Stock market movement forecast: A systematic review;Bustos;Expert Systems with Applications,2020

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