Stock price development forecasting using neural networks

Stock price forecasting is highly important for the entire market economy as well as the investors themselves. However, stock prices develop in a non-linear way. It is therefore rather complicated to accurately forecast their development. A number of authors are now trying to find a suitable tool fo...

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Main Authors: Vrbka Jaromír, Rowland Zuzana
Format: Article
Language:English
Published: EDP Sciences 2017-01-01
Series:SHS Web of Conferences
Subjects:
Online Access:https://doi.org/10.1051/shsconf/20173901032
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spelling doaj-81cf9a47bc784433938fa002c9835aae2021-02-02T08:17:16ZengEDP SciencesSHS Web of Conferences2261-24242017-01-01390103210.1051/shsconf/20173901032shsconf_ies2017_01032Stock price development forecasting using neural networksVrbka JaromírRowland ZuzanaStock price forecasting is highly important for the entire market economy as well as the investors themselves. However, stock prices develop in a non-linear way. It is therefore rather complicated to accurately forecast their development. A number of authors are now trying to find a suitable tool for forecasting the stock prices. One of such tools is undoubtedly artificial neural network, which have a potential of accurate forecast based even on non-linear data. The objective of this contribution is to use neural networks for forecasting the development of the ČEZ, a. s. stock prices on the Prague Stock Exchange for the next 62 trading days. The data for the forecast have been obtained from the Prague Stock Exchange database. These are final prices at the end of each trading day when the company shares were traded, starting from the beginning of the year 2012 till September 2017. The data are processed by the Statistica software, generating multiple layer perceptron (MLP) and radial basis function (RBF) networks. In total, there are 10,000 neural network structures, out of which 5 with the best characteristics are retained. Using statistical interpretation of the results obtained, it was found that all retained networks are applicable in practice.https://doi.org/10.1051/shsconf/20173901032forecastingstockprice developmentartificial neural networks
collection DOAJ
language English
format Article
sources DOAJ
author Vrbka Jaromír
Rowland Zuzana
spellingShingle Vrbka Jaromír
Rowland Zuzana
Stock price development forecasting using neural networks
SHS Web of Conferences
forecasting
stock
price development
artificial neural networks
author_facet Vrbka Jaromír
Rowland Zuzana
author_sort Vrbka Jaromír
title Stock price development forecasting using neural networks
title_short Stock price development forecasting using neural networks
title_full Stock price development forecasting using neural networks
title_fullStr Stock price development forecasting using neural networks
title_full_unstemmed Stock price development forecasting using neural networks
title_sort stock price development forecasting using neural networks
publisher EDP Sciences
series SHS Web of Conferences
issn 2261-2424
publishDate 2017-01-01
description Stock price forecasting is highly important for the entire market economy as well as the investors themselves. However, stock prices develop in a non-linear way. It is therefore rather complicated to accurately forecast their development. A number of authors are now trying to find a suitable tool for forecasting the stock prices. One of such tools is undoubtedly artificial neural network, which have a potential of accurate forecast based even on non-linear data. The objective of this contribution is to use neural networks for forecasting the development of the ČEZ, a. s. stock prices on the Prague Stock Exchange for the next 62 trading days. The data for the forecast have been obtained from the Prague Stock Exchange database. These are final prices at the end of each trading day when the company shares were traded, starting from the beginning of the year 2012 till September 2017. The data are processed by the Statistica software, generating multiple layer perceptron (MLP) and radial basis function (RBF) networks. In total, there are 10,000 neural network structures, out of which 5 with the best characteristics are retained. Using statistical interpretation of the results obtained, it was found that all retained networks are applicable in practice.
topic forecasting
stock
price development
artificial neural networks
url https://doi.org/10.1051/shsconf/20173901032
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