Learning in DSGE macroeconomics

Detalhes bibliográficos
Autor(a) principal: Velecico, Igor
Data de Publicação: 2013
Tipo de documento: Tese
Idioma: eng
Título da fonte: Biblioteca Digital de Teses e Dissertações da USP
Texto Completo: http://www.teses.usp.br/teses/disponiveis/12/12138/tde-20012014-154530/
Resumo: In this thesis we analyze learning mechanisms applied to a variety of macroeconomic models. In the first chapter, we present and discuss the advantages and limitations of estimating Dynamic Stochastic General Equilibrium (DSGE) models added with learning, thus suppressing the central assumption of rational expectations. First, we introduce the reader on how learning can be inserted in those models, starting from the discussion of where and how the rational expectations operator is substituted by the learning mechanism. We then present several additional learning setups related to the information set available to agents considered by the literature, which affect directly the dynamics of the final model. Last, we estimate three different models to assess the advantages of learning in our artificially generated data and real data for Brazil. In the second chapter, we algebraically show the limitations of learning and propose two flexible methods to deal with the parameter instability in data. The first of these methods is closely related to the DSGE-VAR methodology, which we call Learning DSGE-VAR, and the second, which departs even further from the DSGE model, which we call Learning Minimum State Variable, or LMSV. Finally, in the third chapter we provide evidences that the supposedly moderate improvements found in the previous chapters have more to do with the nature of the model at hand than to the learning method itself. To do so, we simulate problems using a time-varying structure similar to the one presented in chapter 1 and evaluate the likelihood improvements with different learning mechanisms. We then provide empirical evidences of learning in reduced form models to forecast inflation, interest rates and output gap for the Brazilian economy, using ad-hoc reduced form models commonly used by practitioners.
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spelling Learning in DSGE macroeconomicsAprendizado em macroeconomia DSGEDSGEDSGEExpectativas racionaisMacroeconomiaMacroeconomicsRational expectationsIn this thesis we analyze learning mechanisms applied to a variety of macroeconomic models. In the first chapter, we present and discuss the advantages and limitations of estimating Dynamic Stochastic General Equilibrium (DSGE) models added with learning, thus suppressing the central assumption of rational expectations. First, we introduce the reader on how learning can be inserted in those models, starting from the discussion of where and how the rational expectations operator is substituted by the learning mechanism. We then present several additional learning setups related to the information set available to agents considered by the literature, which affect directly the dynamics of the final model. Last, we estimate three different models to assess the advantages of learning in our artificially generated data and real data for Brazil. In the second chapter, we algebraically show the limitations of learning and propose two flexible methods to deal with the parameter instability in data. The first of these methods is closely related to the DSGE-VAR methodology, which we call Learning DSGE-VAR, and the second, which departs even further from the DSGE model, which we call Learning Minimum State Variable, or LMSV. Finally, in the third chapter we provide evidences that the supposedly moderate improvements found in the previous chapters have more to do with the nature of the model at hand than to the learning method itself. To do so, we simulate problems using a time-varying structure similar to the one presented in chapter 1 and evaluate the likelihood improvements with different learning mechanisms. We then provide empirical evidences of learning in reduced form models to forecast inflation, interest rates and output gap for the Brazilian economy, using ad-hoc reduced form models commonly used by practitioners.Nesta tese analisamos os instrumentos de aprendizado (Learning) aplicados a uma variedade de modelos macroeconômicos. Em nosso primeiro capítulo, apresentamos e discutimos as vantagens e limitações de se estimar modelos dinâmicos e estocásticos de equilíbrio geral (DSGE) acrescidos de um mecanismo de aprendizado, ou seja, abandonando-se a hipótese de expectativas racionais, tão cara a estes modelos. Em primeiro lugar, mostramos como esse mecanismo pode ser introduzido nesses modelos, começando pela discussão de onde e como o operador de expectativas racionais é substituído pelo operador de aprendizado. Em seguida apresentamos configurações alternativas em relação ao conjunto de informações disponível aos agentes dentro do mecanismo de aprendizado, que afeta diretamente a dinâmica do modelo final a ser estimado. Por fim, estimamos três modelos usando nosso mecanismo de aprendizado, aplicando-o a dados artificiais e reais para a economia brasileira. No segundo capítulo, mostramos algebricamente as limitações do mecanismo de aprendizado em modelos DSGE e propomos dois métodos mais flexíveis para lidar com a instabilidade dos parâmetros nos dados. O primeiro desses métodos é intimamente ligado à literatura de DSGEVAR, e que chamamos de Learning DSGE-VAR, enquanto o segundo método, que se afasta ainda mais do modelo DSGE, ao qual chamamos de LMSV. No terceiro capítulo, provemos evidências de que os ganhos supostamente moderados de nosso modelo de aprendizado apresentados nos dois primeiros capítulos têm mais a ver com a natureza dos modelos estimados do que com o método de aprendizado utilizado. Para tal, simulamos dois grupos de dados usando uma estrutura econômica que varia no tempo, semelhante àquela estudada no primeiro capítulo, e estimamos os modelos utilizando diferentes mecanismos de aprendizado. Por fim, fornecemos evidências empíricas de aprendizado em modelos de forma reduzida para projetar inflação, taxas de juros e hiato do produto para a economia brasileira, através de modelos ad-hoc comumente utilizado por econometristas.Biblioteca Digitais de Teses e Dissertações da USPDuarte, Pedro GarciaVelecico, Igor2013-11-22info:eu-repo/semantics/publishedVersioninfo:eu-repo/semantics/doctoralThesisapplication/pdfhttp://www.teses.usp.br/teses/disponiveis/12/12138/tde-20012014-154530/reponame:Biblioteca Digital de Teses e Dissertações da USPinstname:Universidade de São Paulo (USP)instacron:USPLiberar o conteúdo para acesso público.info:eu-repo/semantics/openAccesseng2016-07-28T16:11:02Zoai:teses.usp.br:tde-20012014-154530Biblioteca Digital de Teses e Dissertaçõeshttp://www.teses.usp.br/PUBhttp://www.teses.usp.br/cgi-bin/mtd2br.plvirginia@if.usp.br|| atendimento@aguia.usp.br||virginia@if.usp.bropendoar:27212016-07-28T16:11:02Biblioteca Digital de Teses e Dissertações da USP - Universidade de São Paulo (USP)false
dc.title.none.fl_str_mv Learning in DSGE macroeconomics
Aprendizado em macroeconomia DSGE
title Learning in DSGE macroeconomics
spellingShingle Learning in DSGE macroeconomics
Velecico, Igor
DSGE
DSGE
Expectativas racionais
Macroeconomia
Macroeconomics
Rational expectations
title_short Learning in DSGE macroeconomics
title_full Learning in DSGE macroeconomics
title_fullStr Learning in DSGE macroeconomics
title_full_unstemmed Learning in DSGE macroeconomics
title_sort Learning in DSGE macroeconomics
author Velecico, Igor
author_facet Velecico, Igor
author_role author
dc.contributor.none.fl_str_mv Duarte, Pedro Garcia
dc.contributor.author.fl_str_mv Velecico, Igor
dc.subject.por.fl_str_mv DSGE
DSGE
Expectativas racionais
Macroeconomia
Macroeconomics
Rational expectations
topic DSGE
DSGE
Expectativas racionais
Macroeconomia
Macroeconomics
Rational expectations
description In this thesis we analyze learning mechanisms applied to a variety of macroeconomic models. In the first chapter, we present and discuss the advantages and limitations of estimating Dynamic Stochastic General Equilibrium (DSGE) models added with learning, thus suppressing the central assumption of rational expectations. First, we introduce the reader on how learning can be inserted in those models, starting from the discussion of where and how the rational expectations operator is substituted by the learning mechanism. We then present several additional learning setups related to the information set available to agents considered by the literature, which affect directly the dynamics of the final model. Last, we estimate three different models to assess the advantages of learning in our artificially generated data and real data for Brazil. In the second chapter, we algebraically show the limitations of learning and propose two flexible methods to deal with the parameter instability in data. The first of these methods is closely related to the DSGE-VAR methodology, which we call Learning DSGE-VAR, and the second, which departs even further from the DSGE model, which we call Learning Minimum State Variable, or LMSV. Finally, in the third chapter we provide evidences that the supposedly moderate improvements found in the previous chapters have more to do with the nature of the model at hand than to the learning method itself. To do so, we simulate problems using a time-varying structure similar to the one presented in chapter 1 and evaluate the likelihood improvements with different learning mechanisms. We then provide empirical evidences of learning in reduced form models to forecast inflation, interest rates and output gap for the Brazilian economy, using ad-hoc reduced form models commonly used by practitioners.
publishDate 2013
dc.date.none.fl_str_mv 2013-11-22
dc.type.status.fl_str_mv info:eu-repo/semantics/publishedVersion
dc.type.driver.fl_str_mv info:eu-repo/semantics/doctoralThesis
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dc.identifier.uri.fl_str_mv http://www.teses.usp.br/teses/disponiveis/12/12138/tde-20012014-154530/
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dc.language.iso.fl_str_mv eng
language eng
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dc.rights.driver.fl_str_mv Liberar o conteúdo para acesso público.
info:eu-repo/semantics/openAccess
rights_invalid_str_mv Liberar o conteúdo para acesso público.
eu_rights_str_mv openAccess
dc.format.none.fl_str_mv application/pdf
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dc.publisher.none.fl_str_mv Biblioteca Digitais de Teses e Dissertações da USP
publisher.none.fl_str_mv Biblioteca Digitais de Teses e Dissertações da USP
dc.source.none.fl_str_mv
reponame:Biblioteca Digital de Teses e Dissertações da USP
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instname_str Universidade de São Paulo (USP)
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reponame_str Biblioteca Digital de Teses e Dissertações da USP
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repository.name.fl_str_mv Biblioteca Digital de Teses e Dissertações da USP - Universidade de São Paulo (USP)
repository.mail.fl_str_mv virginia@if.usp.br|| atendimento@aguia.usp.br||virginia@if.usp.br
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