Physics Informed Neural Network for Option Pricing

Ashish Dhiman, Yibei Hu
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Abstract

We apply a physics-informed deep-learning approach the PINN approach to the Black-Scholes equation for pricing American and European options. We test our approach on both simulated as well as real market data, compare it to analytical/numerical benchmarks. Our model is able to accurately capture the price behaviour on simulation data, while also exhibiting reasonable performance for market data. We also experiment with the architecture and learning process of our PINN model to provide more understanding of convergence and stability issues that impact performance.
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用于期权定价的物理信息神经网络
我们将基于物理的深度学习方法,即PINN方法应用于black - scholes方程,为美国和欧洲期权定价。我们在模拟和真实市场数据上测试我们的方法,并将其与分析/数值基准进行比较。我们的模型能够准确地捕捉模拟数据上的价格行为,同时也表现出对市场数据的合理表现。我们还对我们的PINN模型的架构和学习过程进行了实验,以提供对影响性能的收敛性和稳定性问题的更多理解。
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