Segmentation and estimation of claim severity in motor third-party liability insurance through contrast analysis

Equilibrium Pub Date : 2022-09-30 DOI:10.24136/eq.2022.028
M. Reiff, Erik Šoltés, Silvia Komara, Tatiana Šoltésová, Silvia Zelinová
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Abstract

Research background: Using the marginal means and contrast analysis of the target variable, e.g., claim severity (CS), the actuary can perform an in-depth analysis of the portfolio and fully use the general linear models potential. These analyses are mainly used in natural sciences, medicine, and psychology, but so far, it has not been given adequate attention in the actuarial field. Purpose of the article: The article's primary purpose is to point out the possibilities of contrast analysis for the segmentation of policyholders and estimation of CS in motor third-party liability insurance. The article focuses on using contrast analysis to redefine individual relevant factors to ensure the segmentation of policyholders in terms of actuarial fairness and statistical correctness. The aim of the article is also to reveal the possibilities of using contrast analysis for adequate segmentation in case of interaction of factors and the subsequent estimation of CS. Methods: The article uses the general linear model and associated least squares means. Contrast analysis is being implemented through testing and estimating linear combinations of model parameters. Equations of estimable functions reveal how to interpret the results correctly. Findings & value added: The article shows that contrast analysis is a valuable tool for segmenting policyholders in motor insurance. The segmentation's validity is statistically verifiable and is well applicable to the main effects. Suppose the significance of cross effects is proved during segmentation. In that case, the actuary must take into account the risk that even if the partial segmentation factors are set adequately, statistically proven, this may not apply to the interaction of these factors. The article also provides a procedure for segmentation in case of interaction of factors and the procedure for estimation of the segment's CS. Empirical research has shown that CS is significantly influenced by weight, engine power, age and brand of the car, policyholder's age, and district. The pattern of age's influence on CS differs in different categories of car brands. The significantly highest CS was revealed in the youngest age category and the category of luxury car brands.
基于对比分析的汽车第三者责任保险索赔严重程度划分与估计
研究背景:精算师可以使用目标变量的边际均值和对比分析,例如索赔严重程度(CS),对投资组合进行深入分析,并充分利用一般线性模型的潜力。这些分析主要用于自然科学、医学和心理学,但到目前为止,在精算领域还没有得到足够的重视。本文的目的:本文的主要目的是指出对比分析在汽车第三方责任保险中对投保人的细分和CS估计的可能性。本文侧重于使用对比分析来重新定义个人相关因素,以确保投保人在精算公平性和统计正确性方面的细分。本文的目的还在于揭示在因素相互作用的情况下使用对比分析进行充分分割的可能性,以及随后对CS的估计。方法:本文使用一般线性模型和相关的最小二乘法。对比分析是通过测试和估计模型参数的线性组合来实现的。可估计函数方程揭示了如何正确解释结果。调查结果和附加值:文章表明,对比分析是区分汽车保险投保人的一个有价值的工具。分割的有效性在统计学上是可验证的,并且很好地适用于主要效果。假设在分割过程中证明了交叉效应的重要性。在这种情况下,精算师必须考虑这样一种风险,即即使部分分割因素设置充分,经过统计证明,这也可能不适用于这些因素的相互作用。文章还提供了在因素相互作用的情况下进行分割的程序以及估计分割CS的程序。实证研究表明,CS受体重、发动机功率、汽车年龄和品牌、投保人年龄和地区的显著影响。年龄对CS的影响模式在不同类别的汽车品牌中有所不同。最年轻年龄组和豪华汽车品牌组的CS明显最高。
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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