Advanced approach to numerical forecasting using artificial neural networks

Current global market is driven by many factors, such as the information age, the time and amount of information distributed by many data channels it is practically impossible analyze all kinds of incoming information flows and transform them to data with classical methods. New requirements could be...

Full description

Bibliographic Details
Main Authors: Michael Štencl, Jiří Šťastný
Format: Article
Language:English
Published: Mendel University Press 2009-01-01
Series:Acta Universitatis Agriculturae et Silviculturae Mendelianae Brunensis
Subjects:
Online Access:https://acta.mendelu.cz/57/6/0297/
id doaj-dd5e4b433cf8419aa10f65b7379693dd
record_format Article
spelling doaj-dd5e4b433cf8419aa10f65b7379693dd2020-11-25T00:00:24ZengMendel University PressActa Universitatis Agriculturae et Silviculturae Mendelianae Brunensis1211-85162464-83102009-01-0157629730410.11118/actaun200957060297Advanced approach to numerical forecasting using artificial neural networksMichael Štencl0Jiří Šťastný1Ústav informatiky, Mendelova zemědělská a lesnická univerzita v Brně, Zemědělská 1, 613 00 Brno, Česká republikaÚstav informatiky, Mendelova zemědělská a lesnická univerzita v Brně, Zemědělská 1, 613 00 Brno, Česká republikaCurrent global market is driven by many factors, such as the information age, the time and amount of information distributed by many data channels it is practically impossible analyze all kinds of incoming information flows and transform them to data with classical methods. New requirements could be met by using other methods. Once trained on patterns artificial neural networks can be used for forecasting and they are able to work with extremely big data sets in reasonable time. The patterns used for learning process are samples of past data. This paper uses Radial Basis Functions neural network in comparison with Multi Layer Perceptron network with Back-propagation learning algorithm on prediction task. The task works with simplified numerical time series and includes forty observations with prediction for next five observations. The main topic of the article is the identification of the main differences between used neural networks architectures together with numerical forecasting. Detected differences then verify on practical comparative example.https://acta.mendelu.cz/57/6/0297/artificial neural networksRadial basis functionNumerical ForecastingMulti Layer Perceptron Network
collection DOAJ
language English
format Article
sources DOAJ
author Michael Štencl
Jiří Šťastný
spellingShingle Michael Štencl
Jiří Šťastný
Advanced approach to numerical forecasting using artificial neural networks
Acta Universitatis Agriculturae et Silviculturae Mendelianae Brunensis
artificial neural networks
Radial basis function
Numerical Forecasting
Multi Layer Perceptron Network
author_facet Michael Štencl
Jiří Šťastný
author_sort Michael Štencl
title Advanced approach to numerical forecasting using artificial neural networks
title_short Advanced approach to numerical forecasting using artificial neural networks
title_full Advanced approach to numerical forecasting using artificial neural networks
title_fullStr Advanced approach to numerical forecasting using artificial neural networks
title_full_unstemmed Advanced approach to numerical forecasting using artificial neural networks
title_sort advanced approach to numerical forecasting using artificial neural networks
publisher Mendel University Press
series Acta Universitatis Agriculturae et Silviculturae Mendelianae Brunensis
issn 1211-8516
2464-8310
publishDate 2009-01-01
description Current global market is driven by many factors, such as the information age, the time and amount of information distributed by many data channels it is practically impossible analyze all kinds of incoming information flows and transform them to data with classical methods. New requirements could be met by using other methods. Once trained on patterns artificial neural networks can be used for forecasting and they are able to work with extremely big data sets in reasonable time. The patterns used for learning process are samples of past data. This paper uses Radial Basis Functions neural network in comparison with Multi Layer Perceptron network with Back-propagation learning algorithm on prediction task. The task works with simplified numerical time series and includes forty observations with prediction for next five observations. The main topic of the article is the identification of the main differences between used neural networks architectures together with numerical forecasting. Detected differences then verify on practical comparative example.
topic artificial neural networks
Radial basis function
Numerical Forecasting
Multi Layer Perceptron Network
url https://acta.mendelu.cz/57/6/0297/
work_keys_str_mv AT michaelstencl advancedapproachtonumericalforecastingusingartificialneuralnetworks
AT jiristastny advancedapproachtonumericalforecastingusingartificialneuralnetworks
_version_ 1725445327392079872