Composite Exponential-Pareto distribution

B. N. Pratama, S. Nurrohmah, I. Fithriani
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Abstract

One of the few goals of statistical modeling is to see and analyze the probability of an event which can be represented with data. A probability distribution that is used for modeling data should have some abilities such as flexibility for modeling different kinds of data. Therefore, modeling data is of great importance. Furthermore, insurance companies also need to model data, which in this case is called modeling claim data. Modeling the claims distribution has its own challenge (e.g. skewed and heavy tailed) since most of the claim distributions are different from any classical distributions, therefore researchers are trying to find new models that can fit insurance data better. In this paper, a composite Exponential-Pareto distribution was proposed and introduced. This distribution is equal, but not equivalent to, an exponential density up to a certain threshold value, and a Pareto type-I density for the rest of the model. When being compared with the exponential distribution, the emerging density has a similar shape and a larger tail, and while being compared with the Pareto distribution, the emerging density has a smaller tail. A method to develop a composite distribution is called as composite parametric modeling, which introduced by Cooray and Ananda (2005). In this model, both the exponential distribution and the Pareto type-I distribution have the same weight. Based on the result, composite Exponential-Pareto distribution has some limitations, which are likely to severely diminish its potential for practical applications to real world insurance data. In order to address these issues, there are two different composite Exponential-Pareto distributions based on exponential and Pareto type-I distributions in order to address these concerns. These two different composite Exponential-Pareto distributions are based on the two-component mixture model introduced by Scollnik (2007). The first distribution, which is a reinterpreted composite Exponential-Pareto distribution from the first composite Exponential-Pareto distribution based on the two-component mixture model, has a fixed mixing weight. Meanwhile, the second distribution is a composite Exponential-Pareto distribution with a mixing weight that is not fixed so the distribution can be more flexible and can model different kinds of data. These three composite Exponential-Pareto distributions has k-th raw-moment that only defined for some k > 0. Therefore, this distribution can be categorized as a heavy-tail distribution. The result of this research is a composite distribution that could model a lot of data with characteristics such as unimodal, right-skewed, and heavy-tail because the composite distribution has similar characteristics. A data illustration was presented as a demonstration for how to implement the composite Exponential-Pareto distribution.
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复合指数-帕累托分布
统计建模的少数目标之一是查看和分析可以用数据表示的事件的概率。用于建模数据的概率分布应该具有一些能力,例如对不同类型的数据进行建模的灵活性。因此,建模数据非常重要。此外,保险公司还需要对数据进行建模,在本例中称为建模索赔数据。由于大多数索赔分布不同于任何经典的索赔分布,因此对索赔分布建模有其自身的挑战(例如偏斜和重尾),因此研究人员试图寻找能够更好地拟合保险数据的新模型。本文提出并介绍了一种复合指数-帕累托分布。这个分布等于(但不等于)一个达到某个阈值的指数密度,以及模型其余部分的帕累托i型密度。与指数分布比较,新兴密度形状相似,尾部较大;与帕累托分布比较,新兴密度尾部较小。Cooray和Ananda(2005)提出了一种开发复合分布的方法,称为复合参数化建模。在该模型中,指数分布和Pareto i型分布具有相同的权重。结果表明,复合指数-帕累托分布存在一定的局限性,这可能会严重削弱其在实际保险数据中的应用潜力。为了解决这些问题,有两种不同的复合指数-帕累托分布,基于指数和帕累托i型分布,以解决这些问题。这两种不同的复合指数-帕累托分布基于Scollnik(2007)引入的双组分混合模型。第一个分布是基于双组分混合模型的第一个复合指数-帕累托分布的重新解释的复合指数-帕累托分布,具有固定的混合权。同时,第二种分布是混合权值不固定的复合指数-帕累托分布,因此该分布更加灵活,可以模拟不同类型的数据。这三个复合指数-帕累托分布的第k个原始矩仅在k > 0时才有定义。因此,这种分布可以归类为重尾分布。本研究的结果是一个复合分布,由于复合分布具有相似的特征,可以对大量具有单峰、右偏、重尾等特征的数据进行建模。给出了一个数据图解来演示如何实现复合指数-帕累托分布。
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