机器能纠正期权定价模型吗?

Can a Machine Correct Option Pricing Models?

Journal of Business & Economic Statistics · 2022
被引 16
人大 AABS 4

中文导读

提出两步法,先用参数模型拟合期权价格,再用神经网络纠正模型误差,基于标普500期权数据验证该方法能显著提升多种参数模型的定价表现。

Abstract

We introduce a novel two-step approach to predict implied volatility surfaces. Given any fitted parametric option pricing model, we train a feedforward neural network on the model-implied pricing errors to correct for mispricing and boost performance. Using a large dataset of S&P 500 options, we test our nonparametric correction on several parametric models ranging from ad-hoc Black–Scholes to structural stochastic volatility models and demonstrate the boosted performance for each model. Out-of-sample prediction exercises in the cross-section and in the option panel show that machine-corrected models always outperform their respective original ones, often by a large extent. Our method is relatively indiscriminate, bringing pricing errors down to a similar magnitude regardless of the misspecification of the original parametric model. Even so, correcting models that are less misspecified usually leads to additional improvements in performance and also outperforms a neural network fitted directly to the implied volatility surface.

机器学习期权定价模型隐含波动率曲面非参数修正