BONUS MALUS SYSTEM FOR MOTORIZED VEHICLE INSURANCE USING GEOMETRIC DISTRIBUTIONS AND WEIBULL DISTRIBUTIONS

Grisselia Rizky Sevina, J. Purwadi
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Abstract

. The bonus malus system is one of the systems used to determine the premium amount for the next period based on the claim history of the policyholder. If the policyholder has no claims history or did not file a claim in the previous year, then the policyholder will get a bonus or in other words will get a reduction in the premium rate in the following period. Meanwhile, if the policyholder has a history of claims in the previous year, then the policyholder will be subject to a malus or must pay an increase in the premium rate in the following period. The purpose of this study is to calculate motor vehicle insurance premiums using the classic and optimal bonus malus method which takes into account the frequency of claims with a geometric distribution and the size of claims with a Weibull distribution. The results of this study indicate that the optimal bonus malus system is fairer for policyholders who renew their policies because the premium paid by the policyholder depends on the number of claims and the size of the claim, so that each policyholder will pay a different premium according to the number of claims.
使用几何分布和威布尔分布的机动车辆保险奖金分红系统
.红利减额制度是根据投保人的索赔记录确定下一期保费金额的制度之一。如果投保人在上一年没有索赔记录或没有提出索赔,那么投保人将获得奖金,换句话说,下一期的保费率将会降低。与此同时,如果投保人在上一年有索赔记录,那么投保人将受到损失赔偿或必须在下一期支付更高的保费率。本研究的目的是使用经典的最优奖金扣减法计算机动车辆保险费,该方法考虑了几何分布的理赔频率和Weibull分布的理赔规模。研究结果表明,最优奖金扣减制度对续保的投保人更公平,因为投保人支付的保费取决于索赔次数和索赔金额,因此每个投保人将根据索赔次数支付不同的保费。
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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