The Use of Monte Carlo Method to Model the Aggregate Loss Distribution

Rafika Septiany, B. Setiawaty, Gusti Putu Purnaba
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引用次数: 1

Abstract

Based on Law Number 24 of 2011, a state program was established to provide social protection and welfare for everyone, one of which is health insurance by the Social Insurance Administration Organization (BPJS). In its implementation, several important evaluations are needed. One that requires accurate evaluation is claim frequency and claim severity in determining premiums and reserved funds. This thesis provides one form of a method for selecting the distribution of claim frequency and claim severity. The data used in this study was taken from BPJS Health in the City of Tangerang in 2017. The distribution of opportunities chosen had been adjusted to the participant's claim data and parameter estimated using the Maximum Likelihood Estimation method. The chi-square test was used to check the goodness of fit for claim frequency distributions whereas the Anderson Darling tests were applied to claim severity distributions. The results of the chi-square test and the Anderson-Darling test showed that the model that matched the claim frequency distribution was the Z12M–NBGE distribution while the model that matched the claim severity was lognormal. The Z12M–NBGE distribution and the lognormal formed the aggregate loss distribution using the Monte Carlo method. Furthermore, the simulation results were obtained to the measurement of the Value in Risk (VaR) and Shortfall Expectations (ES). So, the Monte Carlo method is simple to implement the aggregate loss distributions and can easily handle various risks with dependency.  
用蒙特卡罗方法模拟总损失分布
根据2011年第24号法律,制定了一项国家方案,为所有人提供社会保护和福利,其中之一是社会保险管理组织(BPJS)的健康保险。在执行过程中,需要进行几项重要的评价。在确定保费和准备金时,需要准确评估的是索赔频率和索赔严重程度。本文提供了一种选择索赔频率和索赔严重性分布的方法。本研究中使用的数据来自2017年Tangerang市BPJS Health。选择的机会分布已经调整到参与者的索赔数据和参数估计使用最大似然估计方法。卡方检验用于检查索赔频率分布的拟合优度,而Anderson Darling检验用于索赔严重性分布。卡方检验和Anderson-Darling检验结果表明,与索赔频率分布匹配的模型为Z12M-NBGE分布,与索赔严重程度匹配的模型为对数正态分布。利用蒙特卡罗方法,Z12M-NBGE分布与对数正态分布形成了总损失分布。此外,还对风险值(VaR)和缺口预期(ES)的度量进行了仿真。因此,蒙特卡罗方法实现总损失分布简单,易于处理各种具有依赖性的风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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