Deep calibration of rough stochastic volatility models

10/08/2018
by   Christian Bayer, et al.
0

Sparked by Alòs, León, and Vives (2007); Fukasawa (2011, 2017); Gatheral, Jaisson, and Rosenbaum (2018), so-called rough stochastic volatility models such as the rough Bergomi model by Bayer, Friz, and Gatheral (2016) constitute the latest evolution in option price modeling. Unlike standard bivariate diffusion models such as Heston (1993), these non-Markovian models with fractional volatility drivers allow to parsimoniously recover key stylized facts of market implied volatility surfaces such as the exploding power-law behaviour of the at-the-money volatility skew as time to maturity goes to zero. Standard model calibration routines rely on the repetitive evaluation of the map from model parameters to Black-Scholes implied volatility, rendering calibration of many (rough) stochastic volatility models prohibitively expensive since there the map can often only be approximated by costly Monte Carlo (MC) simulations (Bennedsen, Lunde, & Pakkanen, 2017; McCrickerd & Pakkanen, 2018; Bayer et al., 2016; Horvath, Jacquier, & Muguruza, 2017). As a remedy, we propose to combine a standard Levenberg-Marquardt calibration routine with neural network regression, replacing expensive MC simulations with cheap forward runs of a neural network trained to approximate the implied volatility map. Numerical experiments confirm the high accuracy and speed of our approach.

READ FULL TEXT

page 15

page 17

research
07/26/2021

Robustness and sensitivity analyses for rough Volterra stochastic volatility models

In this paper we perform robustness and sensitivity analysis of several ...
research
09/14/2023

Applying Deep Learning to Calibrate Stochastic Volatility Models

Stochastic volatility models, where the volatility is a stochastic proce...
research
02/23/2020

Adaptive sparse grids and quasi-Monte Carlo for option pricing under the rough Bergomi model

The rough Bergomi (rBergomi) model, introduced recently in (Bayer, Friz,...
research
06/28/2022

On the universality of the volatility formation process: when machine learning and rough volatility agree

We train an LSTM network based on a pooled dataset made of hundreds of l...
research
02/03/2021

Deep Hedging under Rough Volatility

We investigate the performance of the Deep Hedging framework under train...
research
10/03/2022

Statistical inference for rough volatility: Minimax Theory

Rough volatility models have gained considerable interest in the quantit...
research
09/02/2020

Weak error rates for option pricing under the rough Bergomi model

In quantitative finance, modeling the volatility structure of underlying...

Please sign up or login with your details

Forgot password? Click here to reset