{"title":"多标的资产大变动年金组合的有效动态套期保值","authors":"X. Lin, Shuai Yang","doi":"10.2139/ssrn.3550106","DOIUrl":null,"url":null,"abstract":"A variable annuity (VA) is an equity-linked annuity that provides investment guarantees to its policyholder and its contributions are normally invested in multiple underlying assets (e.g., mutual funds), which exposes VA liability to significant market risks. Hedging the market risks is therefore crucial in risk managing a VA portfolio as the VA guarantees are long-dated liabilities that may span decades. In order to hedge the VA liability, the issuing insurance company would need to construct a hedging portfolio consisting of the underlying assets whose positions are often determined by the liability Greeks such as partial dollar Deltas. Usually, these quantities are calculated via nested simulation approach. For insurance companies that manage large VA portfolios (e.g., 100k+ policies), calculating those quantities is extremely time-consuming or even prohibitive due to the complexity of the guarantee payoffs and the stochastic-on-stochastic nature of the nested simulation algorithm. In this paper, we extend the surrogate model-assisted nest simulation approach in Lin and Yang [(2020) Insurance: Mathematics and Economics, 91, 85–103] to efficiently calculate the total VA liability and the partial dollar Deltas for large VA portfolios with multiple underlying assets. In our proposed algorithm, the nested simulation is run using small sets of selected representative policies and representative outer loops. As a result, the computing time is substantially reduced. The computational advantage of the proposed algorithm and the importance of dynamic hedging are further illustrated through a profit and loss (P&L) analysis for a large synthetic VA portfolio. Moreover, the robustness of the performance of the proposed algorithm is tested with multiple simulation runs. Numerical results show that the proposed algorithm is able to accurately approximate different quantities of interest and the performance is robust with respect to different sets of parameter inputs. Finally, we show how our approach could be extended to potentially incorporate stochastic interest rates and estimate other Greeks such as Rho.","PeriodicalId":293888,"journal":{"name":"Econometric Modeling: Derivatives eJournal","volume":"11 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2020-03-06","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"9","resultStr":"{\"title\":\"Efficient Dynamic Hedging for Large Variable Annuity Portfolios with Multiple Underlying Assets\",\"authors\":\"X. 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For insurance companies that manage large VA portfolios (e.g., 100k+ policies), calculating those quantities is extremely time-consuming or even prohibitive due to the complexity of the guarantee payoffs and the stochastic-on-stochastic nature of the nested simulation algorithm. In this paper, we extend the surrogate model-assisted nest simulation approach in Lin and Yang [(2020) Insurance: Mathematics and Economics, 91, 85–103] to efficiently calculate the total VA liability and the partial dollar Deltas for large VA portfolios with multiple underlying assets. In our proposed algorithm, the nested simulation is run using small sets of selected representative policies and representative outer loops. As a result, the computing time is substantially reduced. The computational advantage of the proposed algorithm and the importance of dynamic hedging are further illustrated through a profit and loss (P&L) analysis for a large synthetic VA portfolio. 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引用次数: 9
摘要
可变年金是一种与股票挂钩的年金,为投保人提供投资保证,其供款通常投资于多种标的资产(例如共同基金),这使可变年金的负债面临重大的市场风险。因此,对冲市场风险在风险管理中至关重要,因为风险投资担保是可能跨越数十年的长期负债。为了对冲VA负债,发行保险公司需要构建一个对冲投资组合,该组合由标的资产组成,其头寸通常由负债希腊人(如部分美元delta)决定。通常,这些数量是通过嵌套模拟方法计算的。对于管理大型VA投资组合(例如,100,000 +保单)的保险公司来说,由于保证收益的复杂性和嵌套模拟算法的随机特性,计算这些数量非常耗时甚至令人望而却步。在本文中,我们扩展了Lin和Yang [(2020) Insurance: Mathematics and Economics, 91, 85-103]中的代理模型辅助巢模拟方法,以有效地计算具有多个基础资产的大型VA投资组合的总VA负债和部分美元delta。在我们提出的算法中,嵌套模拟使用小组选定的代表性策略和代表性外循环来运行。因此,计算时间大大减少。通过对大型综合风险投资组合的损益分析,进一步说明了所提出算法的计算优势和动态套期保值的重要性。通过多次仿真验证了该算法的鲁棒性。数值结果表明,该算法能够准确地逼近不同的感兴趣量,并且对于不同的参数输入集具有良好的鲁棒性。最后,我们展示了如何将我们的方法扩展到潜在的随机利率,并估计其他希腊人,如Rho。
Efficient Dynamic Hedging for Large Variable Annuity Portfolios with Multiple Underlying Assets
A variable annuity (VA) is an equity-linked annuity that provides investment guarantees to its policyholder and its contributions are normally invested in multiple underlying assets (e.g., mutual funds), which exposes VA liability to significant market risks. Hedging the market risks is therefore crucial in risk managing a VA portfolio as the VA guarantees are long-dated liabilities that may span decades. In order to hedge the VA liability, the issuing insurance company would need to construct a hedging portfolio consisting of the underlying assets whose positions are often determined by the liability Greeks such as partial dollar Deltas. Usually, these quantities are calculated via nested simulation approach. For insurance companies that manage large VA portfolios (e.g., 100k+ policies), calculating those quantities is extremely time-consuming or even prohibitive due to the complexity of the guarantee payoffs and the stochastic-on-stochastic nature of the nested simulation algorithm. In this paper, we extend the surrogate model-assisted nest simulation approach in Lin and Yang [(2020) Insurance: Mathematics and Economics, 91, 85–103] to efficiently calculate the total VA liability and the partial dollar Deltas for large VA portfolios with multiple underlying assets. In our proposed algorithm, the nested simulation is run using small sets of selected representative policies and representative outer loops. As a result, the computing time is substantially reduced. The computational advantage of the proposed algorithm and the importance of dynamic hedging are further illustrated through a profit and loss (P&L) analysis for a large synthetic VA portfolio. Moreover, the robustness of the performance of the proposed algorithm is tested with multiple simulation runs. Numerical results show that the proposed algorithm is able to accurately approximate different quantities of interest and the performance is robust with respect to different sets of parameter inputs. Finally, we show how our approach could be extended to potentially incorporate stochastic interest rates and estimate other Greeks such as Rho.