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Dichotomous unimodal compound models: application to the distribution of insurance losses

机译:二分法单峰复合模型:应用于保险损失的分配

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摘要

A correct modelization of the insurance losses distribution is crucial in the insurance industry. This distribution is generally highly positively skewed, unimodal hump-shaped, and with a heavy right tail. Compound models are a profitable way to accommodate situations in which some of the probability masses are shifted to the tails of the distribution. Therefore, in this work, a general approach to compound unimodal hump-shaped distributions with a mixing dichotomous distribution is introduced. A 2-parameter unimodal hump-shaped distribution, defined on a positive support, is considered and reparametrized with respect to the mode and to another parameter related to the distribution variability. The compound is performed by scaling the latter parameter by means of a dichotomous mixing distribution that governs the tail behavior of the resulting model. The proposed model can also allow for automatic detection of typical and atypical losses via a simple procedure based on maximuma posterioriprobabilities. Unimodal gamma and log-normal are considered as examples of unimodal hump-shaped distributions. The resulting models are firstly evaluated in a sensitivity study and then fitted to two real insurance loss datasets, along with several well-known competitors. Likelihood-based information criteria and risk measures are used to compare the models.
机译:正确的保险损失分配建模化在保险业至关重要。该分布通常具有高度呈偏斜,单峰驼峰,厚重尾部。复合模型是一种有利的方法,可以容纳一些概率质量移动到分布尾部的情况。因此,在这项工作中,引入了一种具有混合二分配的复合单峰驼峰形分布的一般方法。在正面支撑上定义的2参数单峰驼峰形分布被认为和对模式和与分布变异性相关的另一个参数进行重新处理。通过使用二分的混合分布通过控制所得模型的尾部行为的二分的混合分布来进行化合物。所提出的模型还可以通过基于Maximuma PircureiProbabilities的简单过程来自动检测典型和非典型损失。单向伽玛和逻辑正常被认为是单峰驼峰形状的示例。首先在灵敏度研究中评估所得到的模型,然后安装在两个真正的保险损失数据集中,以及几个知名竞争对手。基于可能性的信息标准和风险措施用于比较模型。

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