Option hedging with risk averse reinforcement learning

Edoardo Vittori, M. Trapletti, Marcello Restelli
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引用次数: 13

Abstract

In this paper we show how risk-averse reinforcement learning can be used to hedge options. We apply a state-of-the-art risk-averse algorithm: Trust Region Volatility Optimization (TRVO) to a vanilla option hedging environment, considering realistic factors such as discrete time and transaction costs. Realism makes the problem twofold: the agent must both minimize volatility and contain transaction costs, these tasks usually being in competition. We use the algorithm to train a sheaf of agents each characterized by a different risk aversion, so to be able to span an efficient frontier on the volatility-p&l space. The results show that the derived hedging strategy not only outperforms the Black & Scholes delta hedge, but is also extremely robust and flexible, as it can efficiently hedge options with different characteristics and work on markets with different behaviors than what was used in training.
基于风险厌恶强化学习的期权对冲
在本文中,我们展示了如何使用规避风险的强化学习来对冲期权。我们将最先进的风险规避算法:信托区域波动率优化(TRVO)应用于香草期权对冲环境,考虑离散时间和交易成本等现实因素。现实主义使问题变得双重:代理必须最小化波动性并控制交易成本,这些任务通常处于竞争状态。我们使用该算法来训练一组具有不同风险厌恶特征的代理,以便能够在波动性-损益空间上跨越有效的边界。结果表明,衍生的对冲策略不仅优于Black & Scholes delta对冲,而且非常稳健和灵活,因为它可以有效地对冲具有不同特征的期权,并且可以在与训练中使用的不同行为的市场上工作。
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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