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Volatility Model Pricing and Calibration with Neural Networks using Bayesian Optimisation

Stochastic Alpha, Beta, Rho (SABR) and Heston Volatility models have been used in the financial industry due to their ability to price options as a function of time to maturity and moneyness. Implied volatilities for these models are accurately estimated using a numerical integration approach, Monte...

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Main Author: Goosen, Jenna
Other Authors: Ouwehand, Peter
Format: Thesis
Language:English
Published: Department of Finance and Tax 2023
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access_status_str Open Access
author Goosen, Jenna
author2 Ouwehand, Peter
author_browse Goosen, Jenna
Ouwehand, Peter
author_facet Ouwehand, Peter
Goosen, Jenna
author_sort Goosen, Jenna
collection Thesis
description Stochastic Alpha, Beta, Rho (SABR) and Heston Volatility models have been used in the financial industry due to their ability to price options as a function of time to maturity and moneyness. Implied volatilities for these models are accurately estimated using a numerical integration approach, Monte Carlo approach, series expansion approximation or using a two factor finite difference approach. However, these volatility calculations are computationally expensive. Therefore, this dissertation explores the use of deep artificial neural networks to calibrate volatility models by deploying computational resources to train a model (offline) and then utilise the pre-trained model to competitively price options (online). Deep neural networks in this paper are trained using an indirect and a direct method. The first step of the indirect method utilises a deep artificial neural network to approximate the pricing function (output) using the parameters as inputs. The second step of the indirect method implements a least squares optimisation algorithm to calibrate the parameters. The direct method, on the other hand, uses a deep artificial neural network to calibrate the model parameters using the implied volatility surface as input. Bayesian Optimisation algorithms are implemented to select models with the lowest loss metric for SABR and Heston volatility models. The best performing models are tested and compared for accuracy, speed and robustness for pricing and calibration. This dissertation finds that deep artificial neural networks using Bayesian Optimisation for the indirect and direct methods are able to efficiently and accurately price and calibrate the SABR and Heston Model. In addition, the results show that the implementation of the indirect and direct method, when there is no closed form approximation readily available, is advantageous from both a time and accuracy perspective for pricing and calibration.
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institution University of Cape Town (South Africa)
language eng
last_indexed 2026-06-10T12:45:23.469Z
license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from UCTD — University of Cape Town Open Access Repository
publishDate 2023
publishDateRange 2023
publishDateSort 2023
publisher Department of Finance and Tax
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source_str UCTD — University of Cape Town Open Access Repository
spelling oai:open.uct.ac.za:11427/37197 Volatility Model Pricing and Calibration with Neural Networks using Bayesian Optimisation Goosen, Jenna Ouwehand, Peter SABR Heston Deep Artificial Neural Networks Calibration Pricing Function Bayesian Optimisation At The Money Options Stochastic Alpha, Beta, Rho (SABR) and Heston Volatility models have been used in the financial industry due to their ability to price options as a function of time to maturity and moneyness. Implied volatilities for these models are accurately estimated using a numerical integration approach, Monte Carlo approach, series expansion approximation or using a two factor finite difference approach. However, these volatility calculations are computationally expensive. Therefore, this dissertation explores the use of deep artificial neural networks to calibrate volatility models by deploying computational resources to train a model (offline) and then utilise the pre-trained model to competitively price options (online). Deep neural networks in this paper are trained using an indirect and a direct method. The first step of the indirect method utilises a deep artificial neural network to approximate the pricing function (output) using the parameters as inputs. The second step of the indirect method implements a least squares optimisation algorithm to calibrate the parameters. The direct method, on the other hand, uses a deep artificial neural network to calibrate the model parameters using the implied volatility surface as input. Bayesian Optimisation algorithms are implemented to select models with the lowest loss metric for SABR and Heston volatility models. The best performing models are tested and compared for accuracy, speed and robustness for pricing and calibration. This dissertation finds that deep artificial neural networks using Bayesian Optimisation for the indirect and direct methods are able to efficiently and accurately price and calibrate the SABR and Heston Model. In addition, the results show that the implementation of the indirect and direct method, when there is no closed form approximation readily available, is advantageous from both a time and accuracy perspective for pricing and calibration. 2023-03-03T11:06:59Z 2023-03-03T11:06:59Z 2022 2023-02-20T12:48:50Z Master Thesis Masters MPhil http://hdl.handle.net/11427/37197 eng application/pdf Department of Finance and Tax Faculty of Commerce
spellingShingle SABR
Heston
Deep Artificial Neural Networks
Calibration
Pricing Function
Bayesian Optimisation
At The Money Options
Goosen, Jenna
Volatility Model Pricing and Calibration with Neural Networks using Bayesian Optimisation
thesis_degree_str Master's
title Volatility Model Pricing and Calibration with Neural Networks using Bayesian Optimisation
title_full Volatility Model Pricing and Calibration with Neural Networks using Bayesian Optimisation
title_fullStr Volatility Model Pricing and Calibration with Neural Networks using Bayesian Optimisation
title_full_unstemmed Volatility Model Pricing and Calibration with Neural Networks using Bayesian Optimisation
title_short Volatility Model Pricing and Calibration with Neural Networks using Bayesian Optimisation
title_sort volatility model pricing and calibration with neural networks using bayesian optimisation
topic SABR
Heston
Deep Artificial Neural Networks
Calibration
Pricing Function
Bayesian Optimisation
At The Money Options
url http://hdl.handle.net/11427/37197
work_keys_str_mv AT goosenjenna volatilitymodelpricingandcalibrationwithneuralnetworksusingbayesianoptimisation