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Multilevel Monte-Carlo for computing the SCR with the standard formula and other stress tests

机译:用于计算SCR的多级Monte-Carlo与标准配方和其他压力测试

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This paper studies the multilevel Monte-Carlo estimator for the expectation of a maximum of conditional expectations. This problem arises naturally when considering many stress tests and appears in the calculation of the interest rate module of the standard formula for the SCR. We obtain theoretical convergence results that complement the recent work of Giles and Goda (2019) and give some additional tractability through a parameter that somehow describes regularity properties around the maximum. We then apply the MLMC estimator to the calculation of the SCR at future dates with the standard formula for an ALM savings business on life insurance. We compare it with estimators obtained with Least Squares Monte-Carlo or Neural Networks. We find that the MLMC estimator is computationally more efficient and has the main advantage to avoid regression issues, which is particularly significant in the context of projection of a balance sheet by an insurer due to the path dependency. Last, we discuss the potential of this numerical method and analyse in particular the effect of the portfolio allocation on the SCR at futuredates. (C) 2021 Elsevier B.V. All rights reserved.
机译:本文研究了多级Monte-Carlo估计,以期望最大的条件期望。当考虑许多压力测试时,此问题自然出现,并且出现在SCR的标准公式的利率模块的计算中。我们获得了对吉尔达和GODA最近的工作(2019年)的理论融合结果,并通过某种参数给出一些额外的途径,以某种方式描述了最大值周围的规律性。然后,我们将MLMC估计数应用于未来日期的SCR的计算,其中标准公式用于人寿保险的ALM储蓄业务。我们将其与最小二乘蒙特卡罗或神经网络获得的估算值进行比较。我们发现MLMC估计器在计算上更有效,并且具有避免回归问题的主要优势,这在由于路径依赖性的资产负债表的投影的背景下特别重要。最后,我们讨论了这种数值方法的潜力,并特别分析了投资组合分配对Futuredates的影响。 (c)2021 elestvier b.v.保留所有权利。

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