An Enhanced Method for Tail Index Estimation under Missingness

Extreme events in earthquakes, wind speed, among others are rare but may lead to catastrophic effects on humans and the environment. The primary parameter in the estimation of such rare events is the tail index which measures the tail heaviness of an underlying distribution. Since extreme events are...

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Main Authors: F. Ayiah-Mensah, R. Minkah, L. Asiedu, F. O. Mettle
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:Journal of Applied Mathematics
Online Access:http://dx.doi.org/10.1155/2021/3572555
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author F. Ayiah-Mensah
R. Minkah
L. Asiedu
F. O. Mettle
author_facet F. Ayiah-Mensah
R. Minkah
L. Asiedu
F. O. Mettle
author_sort F. Ayiah-Mensah
collection DOAJ
description Extreme events in earthquakes, wind speed, among others are rare but may lead to catastrophic effects on humans and the environment. The primary parameter in the estimation of such rare events is the tail index which measures the tail heaviness of an underlying distribution. Since extreme events are rare, the presence of missing observations may further lead to flawed. In view of this, there is a growing effort by researchers to address this problem. However, the existing methods of estimating the tail index use only the available nonmissing data. Thus, if the missing observations are influential values, ignoring them could introduce more bias and higher mean square error (MSE) in the tail index estimation and subsequently other extreme event--estimators such as high quantiles and small exceedance probabilities. In this study, we propose imputation of the missing observations before applying some standard estimators (Hill and geometric-type) to estimate the tail index. Through a simulation study, we assess the performance of the standard estimators under the proposed data enhancement method and the existing modified estimators of the tail index. The results show that the enhanced estimators have relatively lower bias and MSE. The estimation method was illustrated with a practical dataset on wind speed with missing values. Therefore, we recommend imputation mechanism as viable for enhancing the performance of tail index estimators in the case where there is missingness.
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spelling doaj-art-cbeee8a2fe23487fabd77c59c927b4892025-08-20T02:19:58ZengWileyJournal of Applied Mathematics1110-757X1687-00422021-01-01202110.1155/2021/35725553572555An Enhanced Method for Tail Index Estimation under MissingnessF. Ayiah-Mensah0R. Minkah1L. Asiedu2F. O. Mettle3Department of Statistics and Actuarial Science, School of Physical and Mathematical Sciences, College of Basic and Applied Sciences, University of Ghana, GhanaDepartment of Statistics and Actuarial Science, School of Physical and Mathematical Sciences, College of Basic and Applied Sciences, University of Ghana, GhanaDepartment of Statistics and Actuarial Science, School of Physical and Mathematical Sciences, College of Basic and Applied Sciences, University of Ghana, GhanaDepartment of Statistics and Actuarial Science, School of Physical and Mathematical Sciences, College of Basic and Applied Sciences, University of Ghana, GhanaExtreme events in earthquakes, wind speed, among others are rare but may lead to catastrophic effects on humans and the environment. The primary parameter in the estimation of such rare events is the tail index which measures the tail heaviness of an underlying distribution. Since extreme events are rare, the presence of missing observations may further lead to flawed. In view of this, there is a growing effort by researchers to address this problem. However, the existing methods of estimating the tail index use only the available nonmissing data. Thus, if the missing observations are influential values, ignoring them could introduce more bias and higher mean square error (MSE) in the tail index estimation and subsequently other extreme event--estimators such as high quantiles and small exceedance probabilities. In this study, we propose imputation of the missing observations before applying some standard estimators (Hill and geometric-type) to estimate the tail index. Through a simulation study, we assess the performance of the standard estimators under the proposed data enhancement method and the existing modified estimators of the tail index. The results show that the enhanced estimators have relatively lower bias and MSE. The estimation method was illustrated with a practical dataset on wind speed with missing values. Therefore, we recommend imputation mechanism as viable for enhancing the performance of tail index estimators in the case where there is missingness.http://dx.doi.org/10.1155/2021/3572555
spellingShingle F. Ayiah-Mensah
R. Minkah
L. Asiedu
F. O. Mettle
An Enhanced Method for Tail Index Estimation under Missingness
Journal of Applied Mathematics
title An Enhanced Method for Tail Index Estimation under Missingness
title_full An Enhanced Method for Tail Index Estimation under Missingness
title_fullStr An Enhanced Method for Tail Index Estimation under Missingness
title_full_unstemmed An Enhanced Method for Tail Index Estimation under Missingness
title_short An Enhanced Method for Tail Index Estimation under Missingness
title_sort enhanced method for tail index estimation under missingness
url http://dx.doi.org/10.1155/2021/3572555
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