Hedging Beyond the Mean: A Distributional Reinforcement Learning Perspective for Hedging Portfolios with Structured Products

Anil Sharma, Freeman Chen, Jaesun Noh, Julio DeJesus, Mario Schlener
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Abstract

Research in quantitative finance has demonstrated that reinforcement learning (RL) methods have delivered promising outcomes in the context of hedging financial portfolios. For example, hedging a portfolio of European options using RL achieves better $PnL$ distribution than the trading hedging strategies like Delta neutral and Delta-Gamma neutral [Cao et. al. 2020]. There is great attention given to the hedging of vanilla options, however, very little is mentioned on hedging a portfolio of structured products such as Autocallable notes. Hedging structured products is much more complex and the traditional RL approaches tend to fail in this context due to the underlying complexity of these products. These are more complicated due to presence of several barriers and coupon payments, and having a longer maturity date (from $7$ years to a decade), etc. In this direction, we propose a distributional RL based method to hedge a portfolio containing an Autocallable structured note. We will demonstrate our RL hedging strategy using American and Digital options as hedging instruments. Through several empirical analysis, we will show that distributional RL provides better $PnL$ distribution than traditional approaches and learns a better policy depicting lower value-at-risk ($VaR$) and conditional value-at-risk ($CVaR$), showcasing the potential for enhanced risk management.
超越均值的对冲:用结构性产品对冲投资组合的分布强化学习视角
定量金融研究表明,强化学习(RL)方法在对冲金融投资组合方面取得了可喜的成果。例如,与 Delta 中性和 Delta-Gamma 中性等交易对冲策略相比,使用 RL 对冲欧式期权组合可获得更好的 $PnL$ 分布[Cao 等人,2020]。人们对虚值期权的套期保值给予了极大的关注,但对结构性产品(如自动赎回票据)组合的套期保值却鲜有提及。对冲结构性产品要复杂得多,由于这些产品的基本复杂性,传统的 RL 方法在这种情况下往往会失败。这些产品由于存在若干障碍和票息支付、到期日较长(从 7 美元到 10 美元不等)等原因而更加复杂。为此,我们提出了一种基于分布式 RL 的方法,用于对冲包含可自动赎回结构性票据的投资组合。我们将使用美式期权和数字期权作为对冲工具来演示我们的 RL 对冲策略。通过几项实证分析,我们将证明分布式 RL 比传统方法提供了更好的 $PnL$ 分布,并能学习到更好的策略,描绘出更低的风险价值($VaR$)和条件风险价值($CVaR$),展示了增强风险管理的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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