Leveraging Machine Learning for High-Dimensional Option Pricing within the Uncertain Volatility Model

Ludovic Goudenege, Andrea Molent, Antonino Zanette
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Abstract

This paper explores the application of Machine Learning techniques for pricing high-dimensional options within the framework of the Uncertain Volatility Model (UVM). The UVM is a robust framework that accounts for the inherent unpredictability of market volatility by setting upper and lower bounds on volatility and the correlation among underlying assets. By leveraging historical data and extreme values of estimated volatilities and correlations, the model establishes a confidence interval for future volatility and correlations, thus providing a more realistic approach to option pricing. By integrating advanced Machine Learning algorithms, we aim to enhance the accuracy and efficiency of option pricing under the UVM, especially when the option price depends on a large number of variables, such as in basket or path-dependent options. Our approach evolves backward in time, dynamically selecting at each time step the most expensive volatility and correlation for each market state. Specifically, it identifies the particular values of volatility and correlation that maximize the expected option value at the next time step. This is achieved through the use of Gaussian Process regression, the computation of expectations via a single step of a multidimensional tree and the Sequential Quadratic Programming optimization algorithm. The numerical results demonstrate that the proposed approach can significantly improve the precision of option pricing and risk management strategies compared with methods already in the literature, particularly in high-dimensional contexts.
在不确定波动率模型中利用机器学习进行高维期权定价
本文探讨了在不确定波动率模型(UVM)框架内应用机器学习技术为高维期权定价的问题。不确定波动率模型是一个稳健的框架,它通过设置波动率的上限和下限以及标的资产之间的相关性来考虑市场波动率固有的不可预测性。通过利用历史数据和估计波动率和相关性的极端值,该模型建立了未来波动率和相关性的置信区间,从而为期权定价提供了更现实的方法。通过整合先进的机器学习算法,我们旨在提高 UVM 下期权定价的准确性和效率,尤其是当期权价格依赖于大量变量时,如一揽子期权或路径依赖期权。我们的方法在时间上向后发展,在每个时间步动态选择每个市场状态下最昂贵的波动率和相关性。具体来说,它能识别出在下一个时间步最大化期权预期价值的波动率和相关性的特定值。这是通过使用高斯过程回归、多维树的单步预期计算和顺序二次编程优化算法来实现的。数值结果表明,与文献中已有的方法相比,特别是在高维背景下,所提出的方法可以显著提高期权定价和风险管理策略的精确度。
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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