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首页> 外文期刊>Astin bulletin >DERIVING ROBUST BAYESIAN PREMIUMS UNDER BANDS OF PRIOR DISTRIBUTIONS WITH APPLICATIONS
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DERIVING ROBUST BAYESIAN PREMIUMS UNDER BANDS OF PRIOR DISTRIBUTIONS WITH APPLICATIONS

机译:在与申请的现有分布带下衍生强大的贝叶斯保险费

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We study the propagation of uncertainty from a class of priors introduced by Arias-Nicolas et al. [(2016) Bayesian Analysis, 11(4), 1107-1136] to the premiums (both the collective and the Bayesian), for a wide family of premium principles (specifically, those that preserve the likelihood ratio order). The class under study reflects the prior uncertainty using distortion functions and fulfills some desirable requirements: elicitation is easy, the prior uncertainty can be measured by different metrics, and the range of quantities of interest is easily obtained from the extremal members of the class. We illustrate the methodology with several examples based on different claim counts models.
机译:我们研究了arias-nicolas等人介绍的一类前锋的不确定性的传播。 [(2016)贝叶斯分析,11(4),1107-1136]至溢价(集体和贝叶斯),广泛的优质原则(特别是那些保存可能性比率令的人)。在研究下的阶级反映了使用失真函数的现有不确定性,并且满足一些所需的要求:诱导容易,可以通过不同的度量来测量现有的不确定性,并且感兴趣的数量范围容易从班级的极端成员获得。我们说明了基于不同索赔计数模型的若干示例的方法。

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