Artificial neural networks in inflation prediction: application like analysis tool for financial decisions at small organizations

Detalhes bibliográficos
Autor(a) principal: Terra, Leonardo Augusto Amaral
Data de Publicação: 2011
Outros Autores: Passador, João Luiz
Tipo de documento: Artigo
Idioma: por
Título da fonte: RAM. Revista de Administração Mackenzie
Texto Completo: https://editorarevistas.mackenzie.br/index.php/RAM/article/view/1467
Resumo: Estimation of inflation rates is crucial for managers, because investment decisions are closely linked to them. However, the behavior of inflation tends to be nonlinear and even chaotic, making it difficult to be estimated. This characteristic may become simplest models, accessible for small organizations, inaccurate to forecasting the phenomenon, since many of these require large data manipulations and / or specialized software. This article aims to evaluate, through formal statistical analysis, the effectiveness of artificial neural networks in inflation forecasting at small organizations reality. ANNs are appropriated tools to measure the phenomena of inflation, as they are approximations of polynomial functions, capable of dealing with nonlinear phenomena. This article selected 3 basic models of Multi Layer Perceptron artificial neural networks, simple enough to be implemented whit open source spreadsheets. These three models were tested from a set of independent variables suggested by Bresser-Pereira and Nakano (1984), with a lag of one, six and twelve months. For that were used Wilcoxon test, coefficient of determination R2 and the average percent error of tested models. Data set was divided into two, one group used for artificial neural networks training and another group used to verify models predictive ability and their ability to generalize. This work concluded that certain models of artificial neural networks have a reasonable ability to predict inflation in the short run and constitute a reasonable alternative for this type of measurement.
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spelling Artificial neural networks in inflation prediction: application like analysis tool for financial decisions at small organizationsRedes neuronales artificiales en el pronóstico de la inflación: la aplicación como una herramienta para apoyar el análisis de las decisiones financieras en organizaciones pequeñasRedes neurais artificiais na previsão da inflação: aplicação como ferramenta de apoio à análise de decisões financeiras em organizações de pequeno porteInflationArtificial neural networksPerceptronSmall organizationsAnalysis decisionsinflaciónRedes Neuronales ArtificialesPerceptronorganizaciones pequeñasanálisis de decisionesInflaçãoRedes neurais artificiaisPerceptronOrganizações de pequeno porteAnálise de decisãoEstimation of inflation rates is crucial for managers, because investment decisions are closely linked to them. However, the behavior of inflation tends to be nonlinear and even chaotic, making it difficult to be estimated. This characteristic may become simplest models, accessible for small organizations, inaccurate to forecasting the phenomenon, since many of these require large data manipulations and / or specialized software. This article aims to evaluate, through formal statistical analysis, the effectiveness of artificial neural networks in inflation forecasting at small organizations reality. ANNs are appropriated tools to measure the phenomena of inflation, as they are approximations of polynomial functions, capable of dealing with nonlinear phenomena. This article selected 3 basic models of Multi Layer Perceptron artificial neural networks, simple enough to be implemented whit open source spreadsheets. These three models were tested from a set of independent variables suggested by Bresser-Pereira and Nakano (1984), with a lag of one, six and twelve months. For that were used Wilcoxon test, coefficient of determination R2 and the average percent error of tested models. Data set was divided into two, one group used for artificial neural networks training and another group used to verify models predictive ability and their ability to generalize. This work concluded that certain models of artificial neural networks have a reasonable ability to predict inflation in the short run and constitute a reasonable alternative for this type of measurement.Las estimaciones de las tasas de inflación son cruciales para directivos ya que las decisiones de inversión están estrechamente vinculadas a ellas. Sin embargo, el comportamiento de la inflación tiende a ser no lineal e incluso caótico, lo que dificulta la correcta estimación. Esta característica del fenómeno puede hacer inexactos los modelos más simples para el pronóstico, accesible a las pequeñas organizaciones, ya que muchos de estos requieren manipulaciones de datos grandes y/o software especializado. Este artículo tiene como objetivo evaluar, mediante un análisis estadístico formal, la eficacia de las redes neuronales artificiales en el pronóstico de la inflación, dentro de la realidad de las pequeñas organizaciones. Las RNA son herramientas adecuadas para medir el fenómeno de la inflación, ya que son aproximaciones de funciones polinómicas, capaz de hacer frente a fenómenos no lineales. Para este proceso fueron seleccionados tres modelos básicos de las redes neuronales artificiales Multi Layer Perceptron, aplicables desde la fuente de las hojas de cálculo de código abierto. Los tres modelos fueron probados a partir de un conjunto de variables independientes sugerido por Bresser-Pereira y Nakano (1984), con retraso de un, seis y doce meses. Para este fin, se utilizaron las pruebas de Wilcoxon, coeficiente de determinación R2 y el porcentaje medio de error de los modelos. El conjunto de datos se dividió en dos, siendo uno de los grupos utilizado para la formación de redes neuronales artificiales, mientras que otro grupo se utilizó para verificar la capacidad predictiva de los modelos y su capacidad de generalización. Con esto, el trabajo concluyó que ciertos modelos de redes neuronales artificiales tienen una capacidad razonable para predecir la inflación en el corto plazo y constituyen una alternativa razonable para este tipo de medición.As estimações das taxas de inflação são de fundamental importância para os gestores, pois as decisões de investimento estão intimamente ligadas a elas. Contudo, o comportamento inflacionário tende a ser não-linear e até mesmo caótico, tornando difícil a sua correta estimação. Esta característica do fenômeno pode tornar imprecisos os modelos mais simples de previsão, acessíveis às pequenas organizações, uma vez que muitos destes necessitam de grandes manipulações de dados e/ou softwares especializados. O presente artigo tem por objetivo avaliar, através de análise formal estatística, a eficácia das redes neurais artificiais na previsão da inflação, dentro da realidade de organizações de pequeno porte. As RNA são ferramentas adequadas para mensurar os fenômenos inflacionários, por se tratarem de aproximações de funções polinomiais, capazes de lidar com fenômenos não lineares. Para este processo foram selecionados 3 modelos básicos de redes neurais artificiais Multi Layer Perceptron, passíveis de implementação a partir de planilhas eletrônicas de código aberto. Os três modelos foram testados a partir de um conjunto de variáveis independentes sugeridas por Bresser-Pereira e Nakano (1984), com defasagem de um, seis e doze meses. Para tal foram utilizados testes de Wilcoxon, coeficiente de determinação R2 e o percentual de erro médio dos modelos. O conjunto de dados foi dividido em dois, sendo um grupo usado para treinamento das Redes Neurais Artificiais, enquanto outro grupo era utilizado para verificar a capacidade de predição dos modelos e sua capacidade de generalização. Com isso, o trabalho concluiu que determinados modelos de redes neurais artificiais possuem uma razoável capacidade de predição da inflação no curto prazo e se constituem em uma alternativa razoável para este tipo de mensuração.Editora Mackenzie2011-11-10info:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersionRedes Neurais artificiais e coeficiente de determinaçãoapplication/pdfhttps://editorarevistas.mackenzie.br/index.php/RAM/article/view/1467Revista de Administração Mackenzie; Vol. 13 No. 1 (2012)Revista de Administração Mackenzie; Vol. 13 Núm. 1 (2012)Revista de Administração Mackenzie (Mackenzie Management Review); v. 13 n. 1 (2012)1678-69711518-6776reponame:RAM. Revista de Administração Mackenzieinstname:Universidade Presbiteriana Mackenzie (MACKENZIE)instacron:MACKENZIEporhttps://editorarevistas.mackenzie.br/index.php/RAM/article/view/1467/3238Copyright (c) 2015 Revista de Administração Mackenzieinfo:eu-repo/semantics/openAccessTerra, Leonardo Augusto AmaralPassador, João Luiz2012-03-01T15:28:45Zoai:ojs.editorarevistas.mackenzie.br:article/1467Revistahttps://editorarevistas.mackenzie.br/index.php/RAM/PUBhttps://editorarevistas.mackenzie.br/index.php/RAM/oairevista.adm@mackenzie.br1678-69711518-6776opendoar:2024-04-19T17:00:38.081307RAM. Revista de Administração Mackenzie - Universidade Presbiteriana Mackenzie (MACKENZIE)false
dc.title.none.fl_str_mv Artificial neural networks in inflation prediction: application like analysis tool for financial decisions at small organizations
Redes neuronales artificiales en el pronóstico de la inflación: la aplicación como una herramienta para apoyar el análisis de las decisiones financieras en organizaciones pequeñas
Redes neurais artificiais na previsão da inflação: aplicação como ferramenta de apoio à análise de decisões financeiras em organizações de pequeno porte
title Artificial neural networks in inflation prediction: application like analysis tool for financial decisions at small organizations
spellingShingle Artificial neural networks in inflation prediction: application like analysis tool for financial decisions at small organizations
Terra, Leonardo Augusto Amaral
Inflation
Artificial neural networks
Perceptron
Small organizations
Analysis decisions
inflación
Redes Neuronales Artificiales
Perceptron
organizaciones pequeñas
análisis de decisiones
Inflação
Redes neurais artificiais
Perceptron
Organizações de pequeno porte
Análise de decisão
title_short Artificial neural networks in inflation prediction: application like analysis tool for financial decisions at small organizations
title_full Artificial neural networks in inflation prediction: application like analysis tool for financial decisions at small organizations
title_fullStr Artificial neural networks in inflation prediction: application like analysis tool for financial decisions at small organizations
title_full_unstemmed Artificial neural networks in inflation prediction: application like analysis tool for financial decisions at small organizations
title_sort Artificial neural networks in inflation prediction: application like analysis tool for financial decisions at small organizations
author Terra, Leonardo Augusto Amaral
author_facet Terra, Leonardo Augusto Amaral
Passador, João Luiz
author_role author
author2 Passador, João Luiz
author2_role author
dc.contributor.author.fl_str_mv Terra, Leonardo Augusto Amaral
Passador, João Luiz
dc.subject.por.fl_str_mv Inflation
Artificial neural networks
Perceptron
Small organizations
Analysis decisions
inflación
Redes Neuronales Artificiales
Perceptron
organizaciones pequeñas
análisis de decisiones
Inflação
Redes neurais artificiais
Perceptron
Organizações de pequeno porte
Análise de decisão
topic Inflation
Artificial neural networks
Perceptron
Small organizations
Analysis decisions
inflación
Redes Neuronales Artificiales
Perceptron
organizaciones pequeñas
análisis de decisiones
Inflação
Redes neurais artificiais
Perceptron
Organizações de pequeno porte
Análise de decisão
description Estimation of inflation rates is crucial for managers, because investment decisions are closely linked to them. However, the behavior of inflation tends to be nonlinear and even chaotic, making it difficult to be estimated. This characteristic may become simplest models, accessible for small organizations, inaccurate to forecasting the phenomenon, since many of these require large data manipulations and / or specialized software. This article aims to evaluate, through formal statistical analysis, the effectiveness of artificial neural networks in inflation forecasting at small organizations reality. ANNs are appropriated tools to measure the phenomena of inflation, as they are approximations of polynomial functions, capable of dealing with nonlinear phenomena. This article selected 3 basic models of Multi Layer Perceptron artificial neural networks, simple enough to be implemented whit open source spreadsheets. These three models were tested from a set of independent variables suggested by Bresser-Pereira and Nakano (1984), with a lag of one, six and twelve months. For that were used Wilcoxon test, coefficient of determination R2 and the average percent error of tested models. Data set was divided into two, one group used for artificial neural networks training and another group used to verify models predictive ability and their ability to generalize. This work concluded that certain models of artificial neural networks have a reasonable ability to predict inflation in the short run and constitute a reasonable alternative for this type of measurement.
publishDate 2011
dc.date.none.fl_str_mv 2011-11-10
dc.type.driver.fl_str_mv info:eu-repo/semantics/article
info:eu-repo/semantics/publishedVersion
Redes Neurais artificiais e coeficiente de determinação
format article
status_str publishedVersion
dc.identifier.uri.fl_str_mv https://editorarevistas.mackenzie.br/index.php/RAM/article/view/1467
url https://editorarevistas.mackenzie.br/index.php/RAM/article/view/1467
dc.language.iso.fl_str_mv por
language por
dc.relation.none.fl_str_mv https://editorarevistas.mackenzie.br/index.php/RAM/article/view/1467/3238
dc.rights.driver.fl_str_mv Copyright (c) 2015 Revista de Administração Mackenzie
info:eu-repo/semantics/openAccess
rights_invalid_str_mv Copyright (c) 2015 Revista de Administração Mackenzie
eu_rights_str_mv openAccess
dc.format.none.fl_str_mv application/pdf
dc.publisher.none.fl_str_mv Editora Mackenzie
publisher.none.fl_str_mv Editora Mackenzie
dc.source.none.fl_str_mv Revista de Administração Mackenzie; Vol. 13 No. 1 (2012)
Revista de Administração Mackenzie; Vol. 13 Núm. 1 (2012)
Revista de Administração Mackenzie (Mackenzie Management Review); v. 13 n. 1 (2012)
1678-6971
1518-6776
reponame:RAM. Revista de Administração Mackenzie
instname:Universidade Presbiteriana Mackenzie (MACKENZIE)
instacron:MACKENZIE
instname_str Universidade Presbiteriana Mackenzie (MACKENZIE)
instacron_str MACKENZIE
institution MACKENZIE
reponame_str RAM. Revista de Administração Mackenzie
collection RAM. Revista de Administração Mackenzie
repository.name.fl_str_mv RAM. Revista de Administração Mackenzie - Universidade Presbiteriana Mackenzie (MACKENZIE)
repository.mail.fl_str_mv revista.adm@mackenzie.br
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