Hybrid fuzzy neural network versus backpropagation neural network: An application to predict the Ibex-35 index stock
The use of neural networks has been extended in all areas of knowledge due to the good results being obtained in the resolution of the different problems posed. The prediction of prices in general, and stock market prices in particular, represents one of the main objectives of the use of neural netw...
Main Author: | |
---|---|
Format: | Article |
Language: | English |
Published: |
Asociación para la Formación y la Investigación en Ciencias Económicas y Sociales
2020-01-01
|
Series: | Finance, Markets and Valuation |
Subjects: | |
Online Access: | https://journalfmv.com/en/archive/2020/1/e5f213fc56.html |
id |
doaj-cbd145ced8864efb9667754ee9a301e3 |
---|---|
record_format |
Article |
spelling |
doaj-cbd145ced8864efb9667754ee9a301e32021-05-02T23:48:55ZengAsociación para la Formación y la Investigación en Ciencias Económicas y SocialesFinance, Markets and Valuation2530-31632020-01-0161859810.46503/ALEP9985Hybrid fuzzy neural network versus backpropagation neural network: An application to predict the Ibex-35 index stockOliver Muncharaz, Javier0https://orcid.org/0000-0001-5317-6489Departamento de Economía y Ciencias Sociales, Universidad Politécnica de Valencia. Valencia,España. Email: jaolmun@ade.upv.esThe use of neural networks has been extended in all areas of knowledge due to the good results being obtained in the resolution of the different problems posed. The prediction of prices in general, and stock market prices in particular, represents one of the main objectives of the use of neural networks in finance. This paper presents the analysis of the efficiency of the hybrid fuzzy neural network against a backpropagation type neural network in the price prediction of the Spanish stock exchange index (IBEX-35). The paper is divided into two parts. In the first part, the main characteristics of neural networks such as hybrid fuzzy and backpropagation, their structures and learning rules are presented. In the second part, the prediction of the IBEX-35 stock exchange index with these networks is analyzed, measuring the efficiency of both as a function of the prediction errors committed. For this purpose, both networks have been constructed with the same inputs and for the same sample period. The results obtained suggest that the Hybrid fuzzy neural network is much more efficient than the widespread backpropagation neuronal network for the sample analysed.https://journalfmv.com/en/archive/2020/1/e5f213fc56.htmlhybrid fuzzybackpropagationneural networkpredict stock index |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Oliver Muncharaz, Javier |
spellingShingle |
Oliver Muncharaz, Javier Hybrid fuzzy neural network versus backpropagation neural network: An application to predict the Ibex-35 index stock Finance, Markets and Valuation hybrid fuzzy backpropagation neural network predict stock index |
author_facet |
Oliver Muncharaz, Javier |
author_sort |
Oliver Muncharaz, Javier |
title |
Hybrid fuzzy neural network versus backpropagation neural network: An application to predict the Ibex-35 index stock |
title_short |
Hybrid fuzzy neural network versus backpropagation neural network: An application to predict the Ibex-35 index stock |
title_full |
Hybrid fuzzy neural network versus backpropagation neural network: An application to predict the Ibex-35 index stock |
title_fullStr |
Hybrid fuzzy neural network versus backpropagation neural network: An application to predict the Ibex-35 index stock |
title_full_unstemmed |
Hybrid fuzzy neural network versus backpropagation neural network: An application to predict the Ibex-35 index stock |
title_sort |
hybrid fuzzy neural network versus backpropagation neural network: an application to predict the ibex-35 index stock |
publisher |
Asociación para la Formación y la Investigación en Ciencias Económicas y Sociales |
series |
Finance, Markets and Valuation |
issn |
2530-3163 |
publishDate |
2020-01-01 |
description |
The use of neural networks has been extended in all areas of knowledge due to the good results being obtained in the resolution of the different problems posed. The prediction of prices in general, and stock market prices in particular, represents one of the main objectives of the use of neural networks in finance. This paper presents the analysis of the efficiency of the hybrid fuzzy neural network against a backpropagation type neural network in the price prediction of the Spanish stock exchange index (IBEX-35). The paper is divided into two parts. In the first part, the main characteristics of neural networks such as hybrid fuzzy and backpropagation, their structures and learning rules are presented. In the second part, the prediction of the IBEX-35 stock exchange index with these networks is analyzed, measuring the efficiency of both as a function of the prediction errors committed. For this purpose, both networks have been constructed with the same inputs and for the same sample period. The results obtained suggest that the Hybrid fuzzy neural network is much more efficient than the widespread backpropagation neuronal network for the sample analysed. |
topic |
hybrid fuzzy backpropagation neural network predict stock index |
url |
https://journalfmv.com/en/archive/2020/1/e5f213fc56.html |
work_keys_str_mv |
AT olivermuncharazjavier hybridfuzzyneuralnetworkversusbackpropagationneuralnetworkanapplicationtopredicttheibex35indexstock |
_version_ |
1721486665845833728 |