Mathematics of Differential Machine Learning in Derivative Pricing and Hedging

Pedro Duarte Gomes
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Abstract

This article introduces the groundbreaking concept of the financial differential machine learning algorithm through a rigorous mathematical framework. Diverging from existing literature on financial machine learning, the work highlights the profound implications of theoretical assumptions within financial models on the construction of machine learning algorithms. This endeavour is particularly timely as the finance landscape witnesses a surge in interest towards data-driven models for the valuation and hedging of derivative products. Notably, the predictive capabilities of neural networks have garnered substantial attention in both academic research and practical financial applications. The approach offers a unified theoretical foundation that facilitates comprehensive comparisons, both at a theoretical level and in experimental outcomes. Importantly, this theoretical grounding lends substantial weight to the experimental results, affirming the differential machine learning method's optimality within the prevailing context. By anchoring the insights in rigorous mathematics, the article bridges the gap between abstract financial concepts and practical algorithmic implementations.
衍生品定价和对冲中的差分机器学习数学
本文通过严谨的数学框架介绍了金融差分机器学习算法这一突破性概念。与现有的金融机器学习文献不同,这项工作强调了金融模型中的理论假设对机器学习算法构建的深远影响。随着金融领域对数据驱动模型用于衍生产品估值和对冲的兴趣日益高涨,这项工作显得尤为及时。值得注意的是,神经网络的预测能力在学术研究和实际金融应用中都获得了极大的关注。这种方法提供了统一的理论基础,便于在理论层面和实验结果方面进行全面比较。重要的是,这一理论基础为实验结果提供了重要依据,肯定了微分机器学习方法在当前环境下的最优性。文章以严谨的数学知识为基础,在抽象的金融概念和实际的算法实现之间架起了一座桥梁。
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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