Deep Learning in Model Risk Neutral Distribution for Option Pricing

Chin-chiang Chou, Jhih-Chen Liu, Chiao-Ting Chen, Szu-Hao Huang
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Abstract

Option pricing has been studied extensively in recent years. An important issue in option pricing is the estimation of the risk neutral distribution of an underlying asset. Better estimation of this distribution can lead to a more rational investment, enabling one to earn an equal return with lower risk. To price options precisely and correctly, traditional financial engineering methods make some assumptions for the risk neutral distribution. However, some assumptions of traditional methods have proved inappropriate and insufficient in empirical option pricing analysis. To address these problems in option pricing, this study adopts a data-driven approach. Owing to advances in hardware and software, studies have been using deep learning methods to price options; however, these have not adequately considered the risk neutral distribution. This may cause an uncontrollable risk, thereby preventing the real-world application of the model. To overcome these problems, this study proposes a deep learning method with a mixture distribution model. Further, it generates a rational risk neutral distribution with accurate empirical pricing analysis.
期权定价模型风险中性分布的深度学习
近年来,期权定价问题得到了广泛的研究。期权定价中的一个重要问题是对标的资产的风险中性分布的估计。更好地估计这种分布可以导致更理性的投资,使人们能够以更低的风险获得相同的回报。为了准确、正确地为期权定价,传统的金融工程方法对风险中性分布作了一定的假设。然而,在实证期权定价分析中,传统方法的一些假设已被证明是不恰当和不足的。为了解决期权定价中的这些问题,本研究采用数据驱动的方法。由于硬件和软件的进步,研究人员一直在使用深度学习方法为期权定价;然而,这些都没有充分考虑到风险中性分布。这可能会导致无法控制的风险,从而阻止模型的实际应用。为了克服这些问题,本研究提出了一种混合分布模型的深度学习方法。进一步,通过准确的实证定价分析,生成了合理的风险中性分布。
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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