ASYMMETRIC PRICE TRANSMISSION MODELING: THE IMPORTANCE OF MODEL COMPLEXITY AND THE PERFORMANCE OF THE SELECTION CRITERIA
Information Criteria provides an attractive basis for selecting the best model from a set of competing asymmetric price transmission models or theories. However, little is understood about the sensitivity of the model selection methods to model complexity. This study therefore fits competing asymmet...
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Russian Journal of Agricultural and Socio-Economic Sciences
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doaj-02a02da0a53749aba35125cf7eca8c2e2020-11-24T22:29:47ZengRussian Journal of Agricultural and Socio-Economic SciencesRussian Journal of Agricultural and Socio-Economic Sciences2226-11842013-01-011314348ASYMMETRIC PRICE TRANSMISSION MODELING: THE IMPORTANCE OF MODEL COMPLEXITY AND THE PERFORMANCE OF THE SELECTION CRITERIAHenry de-Graft AcquahInformation Criteria provides an attractive basis for selecting the best model from a set of competing asymmetric price transmission models or theories. However, little is understood about the sensitivity of the model selection methods to model complexity. This study therefore fits competing asymmetric price transmission models that differ in complexity to simulated data and evaluates the ability of the model selection methods to recover the true model. The results of Monte Carlo experimentation suggest that in general BIC, CAIC and DIC were superior to AIC when the true data generating process was the standard error correction model, whereas AIC was more successful when the true model was the complex error correction model. It is also shown that the model selection methods performed better in large samples for a complex asymmetric data generating process than with a standard asymmetric data generating process. Except for complex models, AIC's performance did not make substantial gains in recovery rates as sample size increased. The research findings demonstrate the influence of model complexity in asymmetric price transmission model comparison and selection.http://www.rjoas.com/issue-2013-01/i013_article_2013_05.pdfMonte Carlo SimulationAsymmetric Price TransmissionModel SelectionModel ComplexityInformation CriteriaModel Recovery Rate |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Henry de-Graft Acquah |
spellingShingle |
Henry de-Graft Acquah ASYMMETRIC PRICE TRANSMISSION MODELING: THE IMPORTANCE OF MODEL COMPLEXITY AND THE PERFORMANCE OF THE SELECTION CRITERIA Russian Journal of Agricultural and Socio-Economic Sciences Monte Carlo Simulation Asymmetric Price Transmission Model Selection Model Complexity Information Criteria Model Recovery Rate |
author_facet |
Henry de-Graft Acquah |
author_sort |
Henry de-Graft Acquah |
title |
ASYMMETRIC PRICE TRANSMISSION MODELING: THE IMPORTANCE OF MODEL COMPLEXITY AND THE PERFORMANCE OF THE SELECTION CRITERIA |
title_short |
ASYMMETRIC PRICE TRANSMISSION MODELING: THE IMPORTANCE OF MODEL COMPLEXITY AND THE PERFORMANCE OF THE SELECTION CRITERIA |
title_full |
ASYMMETRIC PRICE TRANSMISSION MODELING: THE IMPORTANCE OF MODEL COMPLEXITY AND THE PERFORMANCE OF THE SELECTION CRITERIA |
title_fullStr |
ASYMMETRIC PRICE TRANSMISSION MODELING: THE IMPORTANCE OF MODEL COMPLEXITY AND THE PERFORMANCE OF THE SELECTION CRITERIA |
title_full_unstemmed |
ASYMMETRIC PRICE TRANSMISSION MODELING: THE IMPORTANCE OF MODEL COMPLEXITY AND THE PERFORMANCE OF THE SELECTION CRITERIA |
title_sort |
asymmetric price transmission modeling: the importance of model complexity and the performance of the selection criteria |
publisher |
Russian Journal of Agricultural and Socio-Economic Sciences |
series |
Russian Journal of Agricultural and Socio-Economic Sciences |
issn |
2226-1184 |
publishDate |
2013-01-01 |
description |
Information Criteria provides an attractive basis for selecting the best model from a set of competing asymmetric price transmission models or theories. However, little is understood about the sensitivity of the model selection methods to model complexity. This study therefore fits competing asymmetric price transmission models that differ in complexity to simulated data and evaluates the ability of the model selection methods to recover the true model. The results of Monte Carlo experimentation suggest that in general BIC, CAIC and DIC were superior to AIC when the true data generating process was the standard error correction model, whereas AIC was more successful when the true model was the complex error correction model. It is also shown that the model selection methods performed better in large samples for a complex asymmetric data generating process than with a standard asymmetric data generating process. Except for complex models, AIC's performance did not make substantial gains in recovery rates as sample size increased. The research findings demonstrate the influence of model complexity in asymmetric price transmission model comparison and selection. |
topic |
Monte Carlo Simulation Asymmetric Price Transmission Model Selection Model Complexity Information Criteria Model Recovery Rate |
url |
http://www.rjoas.com/issue-2013-01/i013_article_2013_05.pdf |
work_keys_str_mv |
AT henrydegraftacquah asymmetricpricetransmissionmodelingtheimportanceofmodelcomplexityandtheperformanceoftheselectioncriteria |
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