保险估价:两步广义回归方法

IF 1.7 3区 经济学 Q2 ECONOMICS
ASTIN Bulletin Pub Date : 2020-12-08 DOI:10.1017/asb.2021.31
Karim Barigou, V. Bignozzi, A. Tsanakas
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引用次数: 6

摘要

当前的保险公允估值方法通常采用两步方法,将二次套期保值与对剩余负债的风险度量相结合,以获得资本成本边际。在这种方法中,监管风险措施所代表的偏好并没有反映在对冲过程中。我们通过另一种基于广义回归论证的两步对冲程序来解决这个问题,这导致投资组合对风险度量(如风险价值或预期值)保持中立。首先,旨在复制负债的交易资产组合由局部二次套期保值决定。其次,剩余负债用另一个目标函数进行套期保值。然后将风险边际定义为对冲剩余负债所需的资本成本。在第二步中使用分位数回归的情况下,年度偿付能力约束自然得到满足;此外,在满足这些约束的所有对冲投资组合中,该投资组合是风险最小的。提出了一种基于后向迭代算法的保险负债估值与套期保值的神经网络算法。该算法只需要模拟风险驱动因素的路径,具有较好的通用性和适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
INSURANCE VALUATION: A TWO-STEP GENERALISED REGRESSION APPROACH
Abstract Current approaches to fair valuation in insurance often follow a two-step approach, combining quadratic hedging with application of a risk measure on the residual liability, to obtain a cost-of-capital margin. In such approaches, the preferences represented by the regulatory risk measure are not reflected in the hedging process. We address this issue by an alternative two-step hedging procedure, based on generalised regression arguments, which leads to portfolios that are neutral with respect to a risk measure, such as Value-at-Risk or the expectile. First, a portfolio of traded assets aimed at replicating the liability is determined by local quadratic hedging. Second, the residual liability is hedged using an alternative objective function. The risk margin is then defined as the cost of the capital required to hedge the residual liability. In the case quantile regression is used in the second step, yearly solvency constraints are naturally satisfied; furthermore, the portfolio is a risk minimiser among all hedging portfolios that satisfy such constraints. We present a neural network algorithm for the valuation and hedging of insurance liabilities based on a backward iterations scheme. The algorithm is fairly general and easily applicable, as it only requires simulated paths of risk drivers.
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来源期刊
ASTIN Bulletin
ASTIN Bulletin 数学-数学跨学科应用
CiteScore
3.20
自引率
5.30%
发文量
24
审稿时长
>12 weeks
期刊介绍: ASTIN Bulletin publishes papers that are relevant to any branch of actuarial science and insurance mathematics. Its papers are quantitative and scientific in nature, and draw on theory and methods developed in any branch of the mathematical sciences including actuarial mathematics, statistics, probability, financial mathematics and econometrics.
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