Hedging Interest Rate Options with Reinforcement Learning: an investigation of a heavy-tailed distribution

Allan Jonathan Da Silva, J. Baczynski, Leonardo Fagundes De Mello
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Abstract

Purpose: The study intends to model an interest rate index option using a heavy-tailed distribution. The goal is to calculate the interest rate path-dependent option prices that are consistent with market data and to develop a reinforcement learning strategy to discretely hedge the position considering transaction costs. Methodology: This paper presents a mathematical framework to calculate the price of interest rate path-dependent options. The research adapted a Fourier cosine series formula to employ the characteristic function of the present value of the forward index, which is modeled as a variance-gamma process and uses deep Q-learning to hedge such options. Findings: There is market evidence that the implied volatility curve is not flat. The study demonstrated that the variance-gamma process generates an increasing volatility smile, which is consistent with market observations. Additionally, hedging results show that the path-dependent options generated from the variance-gamma process can be efficiently hedged with advanced Q-learning techniques. Research limitations/implications: The study comprised only the variance-gamma process. Other probability distributions, such as the Normal Inverse Gaussian model, should be investigated. Practical implications: This study reveals which type of probability distribution should be present in a pricing engine to be consistent with implied volatilities. The approach provided here can assist managers in evaluating and comprehending market pricing behavior as well as achieving discrete hedging with costs. Originality: The paper addressed the merging of a fast pricing method for the interest rate options with a heavy-tailed distribution and the discrete interest rate derivatives hedging with reinforcement learning.
利用强化学习对冲利率期权:对重尾分布的研究
目的:本研究打算利用重尾分布对利率指数期权进行建模。目标是计算出与市场数据一致的利率路径依赖期权价格,并开发出一种强化学习策略,在考虑交易成本的情况下对头寸进行离散对冲。方法论:本文提出了一个计算利率路径依赖期权价格的数学框架。研究改编了傅里叶余弦数列公式,采用远期指数现值的特征函数,将其建模为方差-伽马过程,并使用深度 Q-learning 对冲此类期权。研究结果:市场证据表明隐含波动率曲线并不平坦。研究表明,方差-伽马过程产生的波动率微笑曲线是递增的,这与市场观察结果一致。此外,对冲结果表明,由方差-伽马过程产生的路径依赖期权可以利用先进的 Q-learning 技术进行有效对冲。研究局限性/影响:本研究仅包括方差-伽马过程。应研究其他概率分布,如正态反高斯模型。实际意义:本研究揭示了定价引擎中应包含哪种类型的概率分布才能与隐含波动率保持一致。本文提供的方法可以帮助管理者评估和理解市场定价行为,并实现有成本的离散对冲。独创性论文探讨了重尾分布利率期权快速定价方法与强化学习离散利率衍生品对冲的合并问题。
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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