Financial time series forecasting using Artificial Neural Networks

Abstract This paper contains a financial forecast using Artificial Neural Networks. The analysis uses the traditional Backpropagation algorithm, followed by Resilient Backpropagation, to estimate the network weights. The use of Resilient Backpropagation Neural Networks solves the learning rate determination problem. Both algorithms are consistent and offer similar predictions. Six major Stock Exchange Market indices from Asia, Europe, and North America were analyzed to obtain hit ratios that could then be compared among markets. A dependent variable was constructed using daily close prices, which was then used for supervised learning and in a matrix of characteristic variables constructed using technical analysis indicators. The time series dataset ranges from January 2000 to June 2019, a period of large fluctuations due to improvements in information technology and high capital mobility. Instead of prediction itself, the scientific objective was to evaluate the relative importance of characteristic variables that allow prediction. Two contribution measures found in the literature were used to evaluate the relevance of each variable for all six financial markets analyzed. Finding that these measures are not always consistent, a simple contribution measure was constructed, giving each weight a geometric interpretation. Evidence is provided that the Rate-of-Change (ROC) is the most useful prediction tool for four aggregate indices, the exceptions being the Hang Seng and EU50 indices, where fastK is the most prominent tool.

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Main Author: Gallardo Del Angel,Roberto
Format: Digital revista
Language:English
Published: Instituto Mexicano de Ejecutivos de Finanzas A.C. 2020
Online Access:http://www.scielo.org.mx/scielo.php?script=sci_arttext&pid=S1665-53462020000100105
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spelling oai:scielo:S1665-534620200001001052020-07-01Financial time series forecasting using Artificial Neural NetworksGallardo Del Angel,Roberto G11 G15 G17 Financial Forecasting Machine Learning Neural Networks Abstract This paper contains a financial forecast using Artificial Neural Networks. The analysis uses the traditional Backpropagation algorithm, followed by Resilient Backpropagation, to estimate the network weights. The use of Resilient Backpropagation Neural Networks solves the learning rate determination problem. Both algorithms are consistent and offer similar predictions. Six major Stock Exchange Market indices from Asia, Europe, and North America were analyzed to obtain hit ratios that could then be compared among markets. A dependent variable was constructed using daily close prices, which was then used for supervised learning and in a matrix of characteristic variables constructed using technical analysis indicators. The time series dataset ranges from January 2000 to June 2019, a period of large fluctuations due to improvements in information technology and high capital mobility. Instead of prediction itself, the scientific objective was to evaluate the relative importance of characteristic variables that allow prediction. Two contribution measures found in the literature were used to evaluate the relevance of each variable for all six financial markets analyzed. Finding that these measures are not always consistent, a simple contribution measure was constructed, giving each weight a geometric interpretation. Evidence is provided that the Rate-of-Change (ROC) is the most useful prediction tool for four aggregate indices, the exceptions being the Hang Seng and EU50 indices, where fastK is the most prominent tool.info:eu-repo/semantics/openAccessInstituto Mexicano de Ejecutivos de Finanzas A.C.Revista mexicana de economía y finanzas v.15 n.1 20202020-03-01info:eu-repo/semantics/articletext/htmlhttp://www.scielo.org.mx/scielo.php?script=sci_arttext&pid=S1665-53462020000100105en10.21919/remef.v15i1.376
institution SCIELO
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country México
countrycode MX
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databasecode rev-scielo-mx
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region America del Norte
libraryname SciELO
language English
format Digital
author Gallardo Del Angel,Roberto
spellingShingle Gallardo Del Angel,Roberto
Financial time series forecasting using Artificial Neural Networks
author_facet Gallardo Del Angel,Roberto
author_sort Gallardo Del Angel,Roberto
title Financial time series forecasting using Artificial Neural Networks
title_short Financial time series forecasting using Artificial Neural Networks
title_full Financial time series forecasting using Artificial Neural Networks
title_fullStr Financial time series forecasting using Artificial Neural Networks
title_full_unstemmed Financial time series forecasting using Artificial Neural Networks
title_sort financial time series forecasting using artificial neural networks
description Abstract This paper contains a financial forecast using Artificial Neural Networks. The analysis uses the traditional Backpropagation algorithm, followed by Resilient Backpropagation, to estimate the network weights. The use of Resilient Backpropagation Neural Networks solves the learning rate determination problem. Both algorithms are consistent and offer similar predictions. Six major Stock Exchange Market indices from Asia, Europe, and North America were analyzed to obtain hit ratios that could then be compared among markets. A dependent variable was constructed using daily close prices, which was then used for supervised learning and in a matrix of characteristic variables constructed using technical analysis indicators. The time series dataset ranges from January 2000 to June 2019, a period of large fluctuations due to improvements in information technology and high capital mobility. Instead of prediction itself, the scientific objective was to evaluate the relative importance of characteristic variables that allow prediction. Two contribution measures found in the literature were used to evaluate the relevance of each variable for all six financial markets analyzed. Finding that these measures are not always consistent, a simple contribution measure was constructed, giving each weight a geometric interpretation. Evidence is provided that the Rate-of-Change (ROC) is the most useful prediction tool for four aggregate indices, the exceptions being the Hang Seng and EU50 indices, where fastK is the most prominent tool.
publisher Instituto Mexicano de Ejecutivos de Finanzas A.C.
publishDate 2020
url http://www.scielo.org.mx/scielo.php?script=sci_arttext&pid=S1665-53462020000100105
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