Estimation and Prediction of Record Values Using Pivotal Quantities and Copulas

Recently, the area of sea ice is rapidly decreasing due to global warming, and since the Arctic sea ice has a great impact on climate change, interest in this is increasing very much all over the world. In fact, the area of sea ice reached a record low in September 2012 after satellite observations...

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Published in:Mathematics
Main Authors: Jeongwook Lee, Joon Jin Song, Yongku Kim, Jung In Seo
Format: Text
Language:English
Published: Multidisciplinary Digital Publishing Institute 2020
Subjects:
Online Access:https://doi.org/10.3390/math8101678
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spelling ftmdpi:oai:mdpi.com:/2227-7390/8/10/1678/ 2023-08-20T04:05:01+02:00 Estimation and Prediction of Record Values Using Pivotal Quantities and Copulas Jeongwook Lee Joon Jin Song Yongku Kim Jung In Seo 2020-10-01 application/pdf https://doi.org/10.3390/math8101678 EN eng Multidisciplinary Digital Publishing Institute Probability and Statistics https://dx.doi.org/10.3390/math8101678 https://creativecommons.org/licenses/by/4.0/ Mathematics; Volume 8; Issue 10; Pages: 1678 C- and D-vine copulas confidence interval exponentiated Gumbel distribution pivotal quantity record values Text 2020 ftmdpi https://doi.org/10.3390/math8101678 2023-08-01T00:12:44Z Recently, the area of sea ice is rapidly decreasing due to global warming, and since the Arctic sea ice has a great impact on climate change, interest in this is increasing very much all over the world. In fact, the area of sea ice reached a record low in September 2012 after satellite observations began in late 1979. In addition, in early 2018, the glacier on the northern coast of Greenland began to collapse. If we are interested in record values of sea ice area, modeling relationships of these values and predicting future record values can be a very important issue because the record values that consist of larger or smaller values than the preceding observations are very closely related to each other. The relationship between the record values can be modeled based on the pivotal quantity and canonical and drawable vine copulas, and the relationship is called a dependence structure. In addition, predictions for future record values can be solved in a very concise way based on the pivotal quantity. To accomplish that, this article proposes an approach to model the dependence structure between record values based on the canonical and drawable vine. To do this, unknown parameters of a probability distribution need to be estimated first, and the pivotal-based method is provided. In the pivotal-based estimation, a new algorithm to deal with a nuisance parameter is proposed. This method allows one to reduce computational complexity when constructing exact confidence intervals of functions with unknown parameters. This method not only reduces computational complexity when constructing exact confidence intervals of functions with unknown parameters, but is also very useful for obtaining the replicated data needed to model the dependence structure based on canonical and drawable vine. In addition, prediction methods for future record values are proposed with the pivotal quantity, and we compared them with a time series forecasting method in real data analysis. The validity of the proposed methods was examined through ... Text Arctic Climate change glacier Global warming Greenland Sea ice MDPI Open Access Publishing Arctic Greenland Mathematics 8 10 1678
institution Open Polar
collection MDPI Open Access Publishing
op_collection_id ftmdpi
language English
topic C- and D-vine copulas
confidence interval
exponentiated Gumbel distribution
pivotal quantity
record values
spellingShingle C- and D-vine copulas
confidence interval
exponentiated Gumbel distribution
pivotal quantity
record values
Jeongwook Lee
Joon Jin Song
Yongku Kim
Jung In Seo
Estimation and Prediction of Record Values Using Pivotal Quantities and Copulas
topic_facet C- and D-vine copulas
confidence interval
exponentiated Gumbel distribution
pivotal quantity
record values
description Recently, the area of sea ice is rapidly decreasing due to global warming, and since the Arctic sea ice has a great impact on climate change, interest in this is increasing very much all over the world. In fact, the area of sea ice reached a record low in September 2012 after satellite observations began in late 1979. In addition, in early 2018, the glacier on the northern coast of Greenland began to collapse. If we are interested in record values of sea ice area, modeling relationships of these values and predicting future record values can be a very important issue because the record values that consist of larger or smaller values than the preceding observations are very closely related to each other. The relationship between the record values can be modeled based on the pivotal quantity and canonical and drawable vine copulas, and the relationship is called a dependence structure. In addition, predictions for future record values can be solved in a very concise way based on the pivotal quantity. To accomplish that, this article proposes an approach to model the dependence structure between record values based on the canonical and drawable vine. To do this, unknown parameters of a probability distribution need to be estimated first, and the pivotal-based method is provided. In the pivotal-based estimation, a new algorithm to deal with a nuisance parameter is proposed. This method allows one to reduce computational complexity when constructing exact confidence intervals of functions with unknown parameters. This method not only reduces computational complexity when constructing exact confidence intervals of functions with unknown parameters, but is also very useful for obtaining the replicated data needed to model the dependence structure based on canonical and drawable vine. In addition, prediction methods for future record values are proposed with the pivotal quantity, and we compared them with a time series forecasting method in real data analysis. The validity of the proposed methods was examined through ...
format Text
author Jeongwook Lee
Joon Jin Song
Yongku Kim
Jung In Seo
author_facet Jeongwook Lee
Joon Jin Song
Yongku Kim
Jung In Seo
author_sort Jeongwook Lee
title Estimation and Prediction of Record Values Using Pivotal Quantities and Copulas
title_short Estimation and Prediction of Record Values Using Pivotal Quantities and Copulas
title_full Estimation and Prediction of Record Values Using Pivotal Quantities and Copulas
title_fullStr Estimation and Prediction of Record Values Using Pivotal Quantities and Copulas
title_full_unstemmed Estimation and Prediction of Record Values Using Pivotal Quantities and Copulas
title_sort estimation and prediction of record values using pivotal quantities and copulas
publisher Multidisciplinary Digital Publishing Institute
publishDate 2020
url https://doi.org/10.3390/math8101678
geographic Arctic
Greenland
geographic_facet Arctic
Greenland
genre Arctic
Climate change
glacier
Global warming
Greenland
Sea ice
genre_facet Arctic
Climate change
glacier
Global warming
Greenland
Sea ice
op_source Mathematics; Volume 8; Issue 10; Pages: 1678
op_relation Probability and Statistics
https://dx.doi.org/10.3390/math8101678
op_rights https://creativecommons.org/licenses/by/4.0/
op_doi https://doi.org/10.3390/math8101678
container_title Mathematics
container_volume 8
container_issue 10
container_start_page 1678
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