Skip navigation
Please use this identifier to cite or link to this item: http://arks.princeton.edu/ark:/88435/dsp01c247dw13s
Title: The Calibration of the Heston Model Using Neural Network Pricing Approximations
Authors: Li, Michael
Advisors: Soner, Mete
Department: Operations Research and Financial Engineering
Certificate Program: Finance Program
Class Year: 2020
Abstract: The calibration of certain stochastic volatility models is an important daily routine for financiers, and balancing accuracy with speed has been an area of recent research in quantitative finance. In the environment of the Heston model, one of the most popular stochastic volatility models, traditional calibration methods are often reasonably accurate but lacking in speed. Building on the growing literature surrounding the implementation of neural network methods in the calibration process, this thesis improves upon previous models and examines the effectiveness of approximating the semi-closed Heston pricing function using neural networks. We show that in line with previous results, the neural network implementation is able to dramatically speed up calibration of the Heston model compared to more traditional global optimization routines, with very small losses in accuracy. We also show that the effectiveness of the neural network approach relies heavily on the characteristics of the training set and the beliefs of the parameter bounds. Finally, as a case study we examine the application of our neural network approach to calibration to the S&P 500 index (SPX) over a recent period of time.
URI: http://arks.princeton.edu/ark:/88435/dsp01c247dw13s
Type of Material: Princeton University Senior Theses
Language: en
Appears in Collections:Operations Research and Financial Engineering, 2000-2020

Files in This Item:
File Description SizeFormat 
LI-MICHAEL-THESIS.pdf2.07 MBAdobe PDF    Request a copy


Items in Dataspace are protected by copyright, with all rights reserved, unless otherwise indicated.