Distributional Analysis and Risk Assessment of U.K. Motor Non-Comprehensive Claims Using the Log-Exponential Family with Properties and Characterizations

  • Mohamed Ibrahim Department of Quantitative Methods, School of Business, King Faisal University, Al Ahsa 31982, Saudi Arabia
  • G. G. Hamedani
  • Abdullah H. Al-Nefaie
  • Haitham M. Yousof
Keywords: Characterizations, Value-at-Risk, Exponential Distribution, Risk Analysis

Abstract

This paper studies the log-exponential-exponential (LEE) distribution which is a novel special case of the logexponential G (LE) family, tailored for flexible modeling of insurance claim sizes. The LEE distribution demonstrates exceptional versatility in capturing diverse density shapes including light-tailed with different forms, whose sign determinesthe direction of skewness. We derive explicit expressions for its probability density function and establish rigorouscharacterizations using truncated moments and reverse-hazard rate identities. A comprehensive simulation study is conductedto assess the performance of six estimation techniques: maximum likelihood estimation (MLE), ordinary least squares (OLS),Cramer–von Mises estimation (CVME), Anderson–Darling estimation (ADE), right-tail Anderson–Darling estimation ´(RTADE), and left-tail Anderson–Darling estimation (LTADE), across various parameter configurations and sample sizes.Finally, we compute key risk indicators (KRIs) including Value-at-Risk (VaR), Tail Value-at-Risk (TVaR), Tail Variance(TV), Tail Mean–Variance (TMV), and Expected Loss (EL) using all six estimation methods, applied to real U.K. motornon-comprehensive claims triangle data
Published
2026-02-22
How to Cite
Mohamed Ibrahim, Hamedani, G. G., Abdullah H. Al-Nefaie, & M. Yousof, H. (2026). Distributional Analysis and Risk Assessment of U.K. Motor Non-Comprehensive Claims Using the Log-Exponential Family with Properties and Characterizations. Statistics, Optimization & Information Computing. https://doi.org/10.19139/soic-2310-5070-3451
Section
Research Articles