Applying Deep Learning to Calibrate Stochastic Volatility Models

09/14/2023
by   Abir Sridi, et al.
0

Stochastic volatility models, where the volatility is a stochastic process, can capture most of the essential stylized facts of implied volatility surfaces and give more realistic dynamics of the volatility smile or skew. However, they come with the significant issue that they take too long to calibrate. Alternative calibration methods based on Deep Learning (DL) techniques have been recently used to build fast and accurate solutions to the calibration problem. Huge and Savine developed a Differential Deep Learning (DDL) approach, where Machine Learning models are trained on samples of not only features and labels but also differentials of labels to features. The present work aims to apply the DDL technique to price vanilla European options (i.e. the calibration instruments), more specifically, puts when the underlying asset follows a Heston model and then calibrate the model on the trained network. DDL allows for fast training and accurate pricing. The trained neural network dramatically reduces Heston calibration's computation time. In this work, we also introduce different regularisation techniques, and we apply them notably in the case of the DDL. We compare their performance in reducing overfitting and improving the generalisation error. The DDL performance is also compared to the classical DL (without differentiation) one in the case of Feed-Forward Neural Networks. We show that the DDL outperforms the DL.

READ FULL TEXT

page 23

page 26

page 28

page 30

page 31

page 33

page 35

research
10/08/2018

Deep calibration of rough stochastic volatility models

Sparked by Alòs, León, and Vives (2007); Fukasawa (2011, 2017); Gatheral...
research
02/13/2023

Parametric Differential Machine Learning for Pricing and Calibration

Differential machine learning (DML) is a recently proposed technique tha...
research
02/15/2019

Supervised Deep Neural Networks (DNNs) for Pricing/Calibration of Vanilla/Exotic Options Under Various Different Processes

We apply supervised deep neural networks (DNNs) for pricing and calibrat...
research
05/05/2020

A generative adversarial network approach to calibration of local stochastic volatility models

We propose a fully data driven approach to calibrate local stochastic vo...
research
03/22/2021

Valuing Exotic Options and Estimating Model Risk

A common approach to valuing exotic options involves choosing a model an...
research
04/29/2019

Gated deep neural networks for implied volatility surfaces

In this paper, we propose a gated deep neural network model to predict i...
research
06/20/2023

Comparing Deep Learning Models for the Task of Volatility Prediction Using Multivariate Data

This study aims to compare multiple deep learning-based forecasters for ...

Please sign up or login with your details

Forgot password? Click here to reset