Some results on quadratic credibility premium using the balanced loss function

Farouk Metiri, Halim zeghdoudi, Ahmed Saadoun
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Abstract

PurposeThis paper generalizes the quadratic framework introduced by Le Courtois (2016) and Sumpf (2018), to obtain new credibility premiums in the balanced case, i.e. under the balanced squared error loss function. More precisely, the authors construct a quadratic credibility framework under the net quadratic loss function where premiums are estimated based on the values of past observations and of past squared observations under the parametric and the non-parametric approaches, this framework is useful for the practitioner who wants to explicitly take into account higher order (cross) moments of past data.Design/methodology/approachIn the actuarial field, credibility theory is an empirical model used to calculate the premium. One of the crucial tasks of the actuary in the insurance company is to design a tariff structure that will fairly distribute the burden of claims among insureds. In this work, the authors use the weighted balanced loss function (WBLF, henceforth) to obtain new credibility premiums, and WBLF is a generalized loss function introduced by Zellner (1994) (see Gupta and Berger (1994), pp. 371-390) which appears also in Dey et al. (1999) and Farsipour and Asgharzadhe (2004).FindingsThe authors declare that there is no conflict of interest and the funding information is not applicable.Research limitations/implicationsThis work is motivated by the following: quadratic credibility premium under the balanced loss function is useful for the practitioner who wants to explicitly take into account higher order (cross) moments and new effects such as the clustering effect to finding a premium more credible and more precise, which arranges both parts: the insurer and the insured. Also, it is easy to apply for parametric and non-parametric approaches. In addition, the formulas of the parametric (Poisson–gamma case) and the non-parametric approach are simple in form and may be used to find a more flexible premium in many special cases. On the other hand, this work neglects the semi-parametric approach because it is rarely used by practitioners.Practical implicationsThere are several examples of actuarial science (credibility).Originality/valueIn this paper, the authors used the WBLF and a quadratic adjustment to obtain new credibility premiums. More precisely, the authors construct a quadratic credibility framework under the net quadratic loss function where premiums are estimated based on the values of past observations and of past squared observations under the parametric and the non-parametric approaches, this framework is useful for the practitioner who wants to explicitly take into account higher order (cross) moments of past data.
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利用平衡损失函数求二次信用溢价的一些结果
目的本文推广了Le Courtois(2016)和Sumpf(2018)提出的二次框架,在平衡情况下,即在平衡平方误差损失函数下,获得新的可信度溢价。更准确地说,作者在净二次损失函数下构建了一个二次可信度框架,其中保费是基于过去观测值和参数和非参数方法下的过去平方观测值来估计的,该框架对希望明确考虑过去数据的高阶(交叉)矩的从业者很有用。设计/方法论/方法在精算领域,可信度理论是一种用于计算保费的经验模型。保险公司精算师的关键任务之一是设计一个费率结构,在被保险人之间公平分配索赔负担。在这项工作中,作者使用加权平衡损失函数(WBLF,此后)来获得新的可信度溢价,WBLF是Zellner(1994)引入的广义损失函数(见Gupta和Berger(1994),pp.371-390),也出现在Dey等人。(1999)以及Farsipour和Asgharzadhe(2004)。发现作者声明不存在利益冲突,资金信息不适用。研究局限性/含义这项工作的动机如下:平衡损失函数下的二次可信度保费对于那些希望明确考虑高阶(交叉)矩和新效应(如聚类效应)的从业者来说是有用的,可以找到更可信、更精确的保费,同时安排保险人和被保险人。此外,它很容易应用于参数和非参数方法。此外,参数(泊松-伽马情况)和非参数方法的公式形式简单,可用于在许多特殊情况下找到更灵活的溢价。另一方面,这项工作忽略了半参数方法,因为它很少被从业者使用。实际含义精算学(可信度)有几个例子。原创性/价值在本文中,作者使用WBLF和二次调整来获得新的可信度溢价。更准确地说,作者在净二次损失函数下构建了一个二次可信度框架,其中保费是基于过去观测值和参数和非参数方法下的过去平方观测值来估计的,该框架对希望明确考虑过去数据的高阶(交叉)矩的从业者很有用。
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来源期刊
Arab Journal of Mathematical Sciences
Arab Journal of Mathematical Sciences Mathematics-Mathematics (all)
CiteScore
1.20
自引率
0.00%
发文量
17
审稿时长
8 weeks
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