<b>Is the Conditional Density Network more suitable than the Maximum likelihood for fitting the Generalized Extreme Value Distribution?

The Generalized Extreme value Distribution (GEV) has been widely used to assess the probability of extreme weather events and the parameter estimation method is a key factor for improving its quantile estimates. On such background, this study aimed to indicate under which conditions (sample size and...

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Main Authors: Monica Cristina Meschiatti, Gabriel Constantino Blain
Format: Article
Language:English
Published: Universidade Estadual de Maringá 2015-10-01
Series:Acta Scientiarum: Technology
Subjects:
Online Access:http://186.233.154.254/ojs/index.php/ActaSciTechnol/article/view/27660
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spelling doaj-b8b790cefbc34d10a959f508efa9c9332020-11-25T01:33:07ZengUniversidade Estadual de MaringáActa Scientiarum: Technology1806-25631807-86642015-10-0137441742210.4025/actascitechnol.v37i4.2766012778<b>Is the Conditional Density Network more suitable than the Maximum likelihood for fitting the Generalized Extreme Value Distribution?Monica Cristina Meschiatti0Gabriel Constantino Blain1Instituto Agronômico de CampinasInstituto Agronômico de CampinasThe Generalized Extreme value Distribution (GEV) has been widely used to assess the probability of extreme weather events and the parameter estimation method is a key factor for improving its quantile estimates. On such background, this study aimed to indicate under which conditions (sample size and tail behavior) the Conditional Density Network (CDN) leads to better GEV quantile estimates than the widely used Maximum likelihood method (MLE) does. With Monte Carlo simulations and rainfall series of several Brazilians regions, we highlight the following results: the return period and the tail behavior of the GEV (specified by the shape parameter) are two of the main factors affecting the quantile estimates. For -0.1 ≤ shape ≤ 0.1 and sample size ≤ 50, the CDN outperformed the MLE. For shape ≥ 0.20 the CDN outperformed the MLE for all sample sizes (30-90). The results also suggested that the CDN is more suitable than the MLE for fitting the GEV parameter to the Brazilian extreme rainfall series. We conclude that when the shape parameter are equal to or greater than -0.1 the CDN should be preferred over the MLE.http://186.233.154.254/ojs/index.php/ActaSciTechnol/article/view/27660neural networksample sizeextreme precipitation.
collection DOAJ
language English
format Article
sources DOAJ
author Monica Cristina Meschiatti
Gabriel Constantino Blain
spellingShingle Monica Cristina Meschiatti
Gabriel Constantino Blain
<b>Is the Conditional Density Network more suitable than the Maximum likelihood for fitting the Generalized Extreme Value Distribution?
Acta Scientiarum: Technology
neural network
sample size
extreme precipitation.
author_facet Monica Cristina Meschiatti
Gabriel Constantino Blain
author_sort Monica Cristina Meschiatti
title <b>Is the Conditional Density Network more suitable than the Maximum likelihood for fitting the Generalized Extreme Value Distribution?
title_short <b>Is the Conditional Density Network more suitable than the Maximum likelihood for fitting the Generalized Extreme Value Distribution?
title_full <b>Is the Conditional Density Network more suitable than the Maximum likelihood for fitting the Generalized Extreme Value Distribution?
title_fullStr <b>Is the Conditional Density Network more suitable than the Maximum likelihood for fitting the Generalized Extreme Value Distribution?
title_full_unstemmed <b>Is the Conditional Density Network more suitable than the Maximum likelihood for fitting the Generalized Extreme Value Distribution?
title_sort <b>is the conditional density network more suitable than the maximum likelihood for fitting the generalized extreme value distribution?
publisher Universidade Estadual de Maringá
series Acta Scientiarum: Technology
issn 1806-2563
1807-8664
publishDate 2015-10-01
description The Generalized Extreme value Distribution (GEV) has been widely used to assess the probability of extreme weather events and the parameter estimation method is a key factor for improving its quantile estimates. On such background, this study aimed to indicate under which conditions (sample size and tail behavior) the Conditional Density Network (CDN) leads to better GEV quantile estimates than the widely used Maximum likelihood method (MLE) does. With Monte Carlo simulations and rainfall series of several Brazilians regions, we highlight the following results: the return period and the tail behavior of the GEV (specified by the shape parameter) are two of the main factors affecting the quantile estimates. For -0.1 ≤ shape ≤ 0.1 and sample size ≤ 50, the CDN outperformed the MLE. For shape ≥ 0.20 the CDN outperformed the MLE for all sample sizes (30-90). The results also suggested that the CDN is more suitable than the MLE for fitting the GEV parameter to the Brazilian extreme rainfall series. We conclude that when the shape parameter are equal to or greater than -0.1 the CDN should be preferred over the MLE.
topic neural network
sample size
extreme precipitation.
url http://186.233.154.254/ojs/index.php/ActaSciTechnol/article/view/27660
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