Content area

Abstract

This study assesses and analyzes real disability insurance data to evaluate extreme risks using advanced statistical tools and metrics. The primary objective is to identify significant events or anomalies in the data and propose actionable strategies for managing financial risks associated with disability insurance claims. To achieve this, we utilize a range of indicators, including Value-at-Risk (VaR), Tail-VaR (TVaR), Tail-Mean-Variance (TMV), Tail-Variance (TV), Mean Excess Loss (MXL), Mean of Order P (MOO-P), Optimal Order of P (O-P), and Peaks Over a Random Threshold Value-at-Risk (PORT-VaR), are applied to identify and describe significant events or anomalies in the data. To address these risks effectively, the research explores the application of the Burr inverse Weibull (BIW) model, a well-regarded framework within extreme value theory (EVT). The study provides a structured approach for disability insurance institutions to better manage unexpected and potentially severe financial losses. Our dataset comprises n=2000 anonymized records from the Social Security Administration (SSA) disability insurance system. By analyzing the asymmetric, right-skewed nature of SSA disability insurance data through these advanced indicators, the research offers insights into the behavior of extreme events and long-tail distributions. Moreover, the percentage distribution of disability reasons in KSA for 2023 is considered. Based on this comprehensive risk analysis, practical recommendations are proposed.

Details

1009240
Company / organization
Title
The Burr Inverse Weibull Model for Risk Analysis Under US Social Security Administration Disability Data Using Peaks Over Random Threshold Method with A Case Study in KSA
Author
Aboalkhair, Ahmad M 1 ; Al-Nefaie, Abdullah H 1 ; Ibrahim, Mohamed 1 ; Hashim, Mujtaba 1 ; Aljadani, Abdussalam 2 ; Mansour, Mahmoud M; Roushdy, Noura; Ahmed, Nazar Ali; Yousof, Haitham M; Ahmed, Basma

 Department of Quantitative Methods, School of Business, King Faisal University 
 Department of Management, College of Business Administration in Yanbu, Taibah University 
Volume
21
Issue
4
Pages
447-474
Number of pages
29
Publication year
2025
Publication date
2025
Publisher
University of the Punjab, College of Statistical & Actuarial Science
Place of publication
Lahore
Country of publication
Pakistan
Publication subject
ISSN
18162711
e-ISSN
22205810
Source type
Scholarly Journal
Language of publication
English
Document type
Journal Article
ProQuest document ID
3289962659
Document URL
https://www.proquest.com/scholarly-journals/burr-inverse-weibull-model-risk-analysis-under-us/docview/3289962659/se-2?accountid=208611
Copyright
Copyright University of the Punjab, College of Statistical & Actuarial Science 2025
Last updated
2026-01-03
Database
ProQuest One Academic