In this thesis, we consider some popular stochastic differential equation models used
in finance, such as the Vasicek Interest Rate model, the Heston model and a new fractional
Heston model. We discuss how to perform inference about unknown quantities associated
with these models in the Bayesian framework.
We describe sequential importance sampling, the particle filter and the auxiliary particle
filter. We apply these inference methods to the Vasicek Interest Rate model and the
standard stochastic volatility model, both to sample from the posterior distribution of the
underlying processes and to update the posterior distribution of the parameters sequentially,
as data arrive over time. We discuss the sensitivity of our results to prior assumptions.
We then consider the use of Markov chain Monte Carlo (MCMC) methodology to sample
from the posterior distribution of the underlying volatility process and of the unknown
model parameters in the Heston model. The particle filter and the auxiliary particle
filter are also employed to perform sequential inference. Next we extend the Heston
model to the fractional Heston model, by replacing the Brownian motions that drive the
underlying stochastic differential equations by fractional Brownian motions, so allowing
a richer dependence structure across time. Again, we use a variety of methods to perform
inference. We apply our methodology to simulated and real financial data with success.
We then discuss how to make forecasts using both the Heston and the fractional Heston
model. We make comparisons between the models and show that using our new fractional
Heston model can lead to improve forecasts for real financial data.
Date of Award | 2013 |
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Original language | English |
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Awarding Institution | |
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Supervisor | Julian Stander (Other Supervisor) |
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- Bayesian inference
- Markov chain Monte Carlo
- Sequential Monte Carlo Methods
- Particle Filter
- Auxiliary Particle Filter
- Fractional Stochastic Differential Equation
Bayesian Stochastic Differential Equation Modelling with Application to Finance
Al-Saadony, M. (Author). 2013
Student thesis: PhD