Heavy-Tailed Log-Logistic Distribution: Properties, Risk Measures and Applications

Abd-Elmonem A. M. Teamah, Ahmed A. Elbanna, Ahmed M. Gemeay
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引用次数: 18

Abstract

Heavy tailed distributions have a big role in studying risk data sets. Statisticians in many cases search and try to find new or relatively new statistical models to fit data sets in different fields. This article introduced a relatively new heavy-tailed statistical model by using alpha power transformation and exponentiated log-logistic distribution which called alpha power exponentiated log-logistic distribution. Its statistical properties were derived mathematically such as moments, moment generating function, quantile function, entropy, inequality curves and order statistics. Five estimation methods were introduced mathematically and the behaviour of the proposed model parameters was checked by randomly generated data sets and these estimation methods. Also, some actuarial measures were deduced mathematically such as value at risk, tail value at risk, tail variance and tail variance premium. Numerical values for these measures were performed and proved that the proposed distribution has a heavier tail than others compared models. Finally, three real data sets from different fields were used to show how these proposed models fitting these data sets than other many wells known and related models.
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重尾对数- logistic分布:性质、风险度量及应用
重尾分布在研究风险数据集方面具有重要作用。统计学家在许多情况下搜索并试图找到新的或相对较新的统计模型来拟合不同领域的数据集。本文介绍了一种利用幂变换和指数对数-logistic分布的较新的重尾统计模型,即幂指数对数-logistic分布。从数学上推导了其统计性质,如矩、矩生成函数、分位数函数、熵、不等式曲线和序统计量。从数学上介绍了五种估计方法,并通过随机生成的数据集和这些估计方法对所提出的模型参数的行为进行了检验。对风险值、风险尾值、尾方差和尾方差溢价等精算指标进行了数学推导。对这些度量进行了数值计算,并证明了所提出的分布比其他比较模型具有更重的尾部。最后,使用来自不同领域的三个真实数据集来展示这些提出的模型与其他许多众所周知的相关模型相比如何拟合这些数据集。
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