A discrete claims-model for the inflated and over-dispersed automobile claims frequencies data: Applications and actuarial risk analysis

IF 1.1 Q3 STATISTICS & PROBABILITY
H. Yousof, M. Saber, Abdullah H. Al-nefaie, Nadeem Shafique Butt, M. Ibrahim, Salwa L. Alkhayyat
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引用次数: 0

Abstract

This paper showcases the effectiveness of the discrete generalized Burr-Hatke distribution in analyzing insurance claims data, specifically focusing on scenarios with over-dispersed and zero-inflated claims. Key contributions include presenting foundational statistical theories with mathematical proofs to enrich the paper’s mathematical and statistical aspects. Through the application of this discrete distribution, the study conducted a thorough risk analysis across five diverse sets of insurance claims data, evaluating critical risk indicators at specified quantiles. These indicators provided detailed insights into potential losses across different risk levels, supporting effective risk management strategies. The research emphasizes the importance of selecting appropriate probability distributions when analyzing zero-inflated data, as commonly observed in insurance claims. The discrete distribution accommodated these unique data characteristics and facilitated a robust analysis of risk metrics, enhancing the accuracy of potential loss assessments and reducing associated uncertainties. Furthermore, the study highlights the practical relevance of the discrete distribution in addressing specific challenges inherent to insurance claims data. By leveraging this distribution, insurers and risk analysts can improve their risk modeling capabilities, leading to more informed decision-making and enhanced financial exposure management.
针对夸大和过度分散的汽车索赔频率数据的离散索赔模型:应用与精算风险分析
本文展示了离散广义伯尔-哈特克分布在分析保险理赔数据方面的有效性,特别是在理赔过度分散和零膨胀的情况下。本文的主要贡献包括提出了带有数学证明的基础统计理论,丰富了论文的数学和统计学内容。通过应用这种离散分布,该研究对五组不同的保险理赔数据进行了全面的风险分析,评估了特定数量级的关键风险指标。这些指标详细揭示了不同风险等级的潜在损失,为有效的风险管理战略提供了支持。研究强调了在分析零膨胀数据时选择适当概率分布的重要性,这在保险理赔中很常见。离散分布适应了这些独特的数据特征,促进了对风险指标的稳健分析,提高了潜在损失评估的准确性,减少了相关的不确定性。此外,该研究还强调了离散分布在应对保险理赔数据固有的特定挑战方面的实际意义。通过利用这种分布,保险公司和风险分析师可以提高他们的风险建模能力,从而做出更明智的决策并加强财务风险管理水平。
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来源期刊
CiteScore
3.30
自引率
26.70%
发文量
53
期刊介绍: Pakistan Journal of Statistics and Operation Research. PJSOR is a peer-reviewed journal, published four times a year. PJSOR publishes refereed research articles and studies that describe the latest research and developments in the area of statistics, operation research and actuarial statistics.
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