非寿险定价平衡校正下的凸阶和洛伦兹阶:回顾与新发展

IF 1.9 2区 经济学 Q2 ECONOMICS Insurance Mathematics & Economics Pub Date : 2024-06-28 DOI:10.1016/j.insmatheco.2024.06.003
Michel Denuit , Julien Trufin
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引用次数: 0

摘要

通过利用海量数据,机器学习技术为精算师提供了与索赔频率和严重程度高度相关的预测指标。然而,这些预测因子通常无法达到财务平衡,因此不能作为纯保费。自动校准能有效解决这一问题,因为它能确保每一组支付相同保费的投保人平均都能自负盈亏。平衡校正被认为是使任何候选保费自动校正的一种方法,其额外优势在于它能改善样本外布雷格曼发散,从而改善预测性特威迪偏差。本文证明了平衡校正对集中曲线也有好处,并推导出确保初始预测因子及其平衡校正版本按洛伦兹顺序排列的条件。最后,本文提出了对两个相互竞争的预测因子的平衡校正版本进行凸序排序的标准。
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Convex and Lorenz orders under balance correction in nonlife insurance pricing: Review and new developments

By exploiting massive amounts of data, machine learning techniques provide actuaries with predictors exhibiting high correlation with claim frequencies and severities. However, these predictors generally fail to achieve financial equilibrium and thus do not qualify as pure premiums. Autocalibration effectively addresses this issue since it ensures that every group of policyholders paying the same premium is on average self-financing. Balance correction has been proposed as a way to make any candidate premium autocalibrated with the added advantage that it improves out-of-sample Bregman divergence and hence predictive Tweedie deviance. This paper proves that balance correction is also beneficial in terms of concentration curves and derives conditions ensuring that the initial predictor and its balance-corrected version are ordered in Lorenz order. Finally, criteria are proposed to rank the balance-corrected versions of two competing predictors in the convex order.

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来源期刊
Insurance Mathematics & Economics
Insurance Mathematics & Economics 管理科学-数学跨学科应用
CiteScore
3.40
自引率
15.80%
发文量
90
审稿时长
17.3 weeks
期刊介绍: Insurance: Mathematics and Economics publishes leading research spanning all fields of actuarial science research. It appears six times per year and is the largest journal in actuarial science research around the world. Insurance: Mathematics and Economics is an international academic journal that aims to strengthen the communication between individuals and groups who develop and apply research results in actuarial science. The journal feels a particular obligation to facilitate closer cooperation between those who conduct research in insurance mathematics and quantitative insurance economics, and practicing actuaries who are interested in the implementation of the results. To this purpose, Insurance: Mathematics and Economics publishes high-quality articles of broad international interest, concerned with either the theory of insurance mathematics and quantitative insurance economics or the inventive application of it, including empirical or experimental results. Articles that combine several of these aspects are particularly considered.
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