A New Class of Heavy-Tailed Distributions: Modeling and Simulating Actuarial Measures

Statistical distributions play a prominent role for modeling data in applied fields, particularly in actuarial, financial sciences, and risk management fields. Among the statistical distributions, the heavy-tailed distributions have proven the best choice to use for modeling heavy-tailed financial d...

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Main Authors: Jin Zhao, Zubair Ahmad, Eisa Mahmoudi, E. H. Hafez, Marwa M. Mohie El-Din
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/5580228
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spelling doaj-baaf0b3b77fd4f69bb5d24f437ec3f612021-04-12T01:24:12ZengHindawi-WileyComplexity1099-05262021-01-01202110.1155/2021/5580228A New Class of Heavy-Tailed Distributions: Modeling and Simulating Actuarial MeasuresJin Zhao0Zubair Ahmad1Eisa Mahmoudi2E. H. Hafez3Marwa M. Mohie El-Din4School of FinanceDepartment of StatisticsDepartment of StatisticsDepartment of MathematicsDepartment of Mathematical and Natural SciencesStatistical distributions play a prominent role for modeling data in applied fields, particularly in actuarial, financial sciences, and risk management fields. Among the statistical distributions, the heavy-tailed distributions have proven the best choice to use for modeling heavy-tailed financial data. The actuaries are often in search of such types of distributions to provide the best description of the actuarial and financial data. This study presents a new power transformation to introduce a new family of heavy-tailed distributions useful for modeling heavy-tailed financial data. A submodel, namely, heavy-tailed beta-power transformed Weibull model is considered to demonstrate the adequacy of the proposed method. Some actuarial measures such as value at risk, tail value at risk, tail variance, and tail variance premium are calculated. A brief simulation study based on these measures is provided. Finally, an application to the insurance loss dataset is analyzed, which revealed that the proposed distribution is a superior model among the competitors and could potentially be very adequate in describing and modeling actuarial and financial data.http://dx.doi.org/10.1155/2021/5580228
collection DOAJ
language English
format Article
sources DOAJ
author Jin Zhao
Zubair Ahmad
Eisa Mahmoudi
E. H. Hafez
Marwa M. Mohie El-Din
spellingShingle Jin Zhao
Zubair Ahmad
Eisa Mahmoudi
E. H. Hafez
Marwa M. Mohie El-Din
A New Class of Heavy-Tailed Distributions: Modeling and Simulating Actuarial Measures
Complexity
author_facet Jin Zhao
Zubair Ahmad
Eisa Mahmoudi
E. H. Hafez
Marwa M. Mohie El-Din
author_sort Jin Zhao
title A New Class of Heavy-Tailed Distributions: Modeling and Simulating Actuarial Measures
title_short A New Class of Heavy-Tailed Distributions: Modeling and Simulating Actuarial Measures
title_full A New Class of Heavy-Tailed Distributions: Modeling and Simulating Actuarial Measures
title_fullStr A New Class of Heavy-Tailed Distributions: Modeling and Simulating Actuarial Measures
title_full_unstemmed A New Class of Heavy-Tailed Distributions: Modeling and Simulating Actuarial Measures
title_sort new class of heavy-tailed distributions: modeling and simulating actuarial measures
publisher Hindawi-Wiley
series Complexity
issn 1099-0526
publishDate 2021-01-01
description Statistical distributions play a prominent role for modeling data in applied fields, particularly in actuarial, financial sciences, and risk management fields. Among the statistical distributions, the heavy-tailed distributions have proven the best choice to use for modeling heavy-tailed financial data. The actuaries are often in search of such types of distributions to provide the best description of the actuarial and financial data. This study presents a new power transformation to introduce a new family of heavy-tailed distributions useful for modeling heavy-tailed financial data. A submodel, namely, heavy-tailed beta-power transformed Weibull model is considered to demonstrate the adequacy of the proposed method. Some actuarial measures such as value at risk, tail value at risk, tail variance, and tail variance premium are calculated. A brief simulation study based on these measures is provided. Finally, an application to the insurance loss dataset is analyzed, which revealed that the proposed distribution is a superior model among the competitors and could potentially be very adequate in describing and modeling actuarial and financial data.
url http://dx.doi.org/10.1155/2021/5580228
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