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首页> 外文期刊>Journal of Mathematics and Statistics >Model for Analyzing Counts with Over-,Equi-and Under-Dispersion in Actuarial Statistics | Science Publications
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Model for Analyzing Counts with Over-,Equi-and Under-Dispersion in Actuarial Statistics | Science Publications

机译:精算统计中色散过高,等高和不足的计数模型科学出版物

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> Problem statement: Actuarial science has grown much popularity in the recent years due to the growth of insurance companies. In practice, the data involved in actuarial science are mostly counts which may be over-,equi-or under-dispersed. Many probability distributions were proposed to model such data such as the mixed Poisson distributions. However, the estimation methodologies based on such mixed Poisson distributions may be complicated and may not yield consistent and efficient estimates. Approach: In this study, we consider a recently introduced model known as the two-parameter Com-Poisson distribution that is flexible in modeling both over-,equi-and under-dispersed data. Results: The estimation of parameters is carried out using a quasi-likelihood estimation technique based on a joint estimation approach and a marginal approach via Newton-Raphson iterative procedure. Conclusion: The Com-Poisson distribution is applied on two samples of insurance data and we compare the estimates with the estimates based on the Negative-Lindley distribution. Based on the results, it is shown that both Com-Poisson and Negative Lindley yield almost equally efficient estimates of the parameters with fitted values almost close to the actual values under both the joint and marginal quasi-likelihood approaches.
机译: > 问题陈述:近年来,由于保险公司的增长,精算学变得越来越受欢迎。在实践中,精算科学涉及的数据多数是计数,可能过度,均衡或分散不足。提出了许多概率分布来对此类数据建模,例如混合泊松分布。但是,基于这种混合泊松分布的估计方法可能很复杂,并且可能无法产生一致且有效的估计。 方法:在这项研究中,我们考虑了最近引入的称为两参数Com-Poisson分布的模型,该模型可以灵活地对过度分散,均匀分散和欠分散的数据进行建模。 结果:使用基于牛顿-拉夫森迭代程序的联合估计方法和边际方法的准似然估计技术对参数进行估计。 结论: Com-Poisson分布应用于两个保险数据样本,我们将估计值与基于Negative-Lindley分布的估计值进行比较。根据结果​​,在联合和边际拟似然法下,Com-Poisson和Negative Lindley对参数的估计值几乎相等,拟合值几乎与实际值接近。

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