Extensive networks would eliminate the demand for pricing formulas

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摘要

In this study, we generate a large number of implied volatilities for the Stochastic Alpha Beta Rho (SABR) model using a graphics processing unit (GPU) based simulation and enable an extensive neural network to learn the volatilities. This model does not have any exact pricing formulas for vanilla options, and neural networks have an outstanding ability to approximate various functions. Surprisingly, the network reduces the simulation noise by itself, thereby achieving accuracy equal to large-scale Monte-Carlo simulation. Extremely high accuracy cannot be attained via existing approximate formulas. Moreover, the network is as efficient as the approaches based on the formulas. When evaluating accuracy and efficiency, extensive networks can eliminate the necessity of pricing formulas for the SABR model. Another significant contribution is that a novel method is proposed to examine the errors based on nonlinear regression. This approach is easily extendable to other pricing models for which it is hard to deduce analytic formulas.

论文关键词:Efficient pricing,Deep learning,SABR model,Nonlinear regression,GPU-based simulation,Neural network

论文评审过程:Received 22 January 2021, Revised 4 December 2021, Accepted 6 December 2021, Available online 11 December 2021, Version of Record 22 December 2021.

论文官网地址:https://doi.org/10.1016/j.knosys.2021.107918