Maximum likelihood has proved to be a valuable tool for fitting the log-normal stochastic volatility model to financial returns time series. Using a sequential change of variable framework, we are able to cast more general stochastic volatility models into a form appropriate for importance samplers based on the Laplace approximation. We apply the methodology to two example models, showing that efficient importance samplers can be constructed even for highly non-Gaussian latent processes such as square-root diffusions
Publicado además en: Recent developments in Time Series, 2003, vol. 2, ISBN13: 9781840649512, pp....
Stochastic differential equations often provide a convenient way to describe the dynamics of economi...
In this paper we are concerned with non-parametric inference on the volatility of volatility proces...
Maximum likelihood has proved to be a valuable tool for fitting the log-normal stochastic volatility...
We consider Taylor's stochastic volatility model (SVM) when the innovations of the hidden log-volati...
We develop and implement a new method for maximum likelihood estimation in closed-form of stochastic...
Volatility is a crucial aspect of risk management and important to accurately quantify. A broad rang...
Although stochastic volatility (SV) models have an intuitive appeal, their empirical application has...
Estimation of stochastic volatility (SV) models is a formidable task because the presence of the lat...
I hereby declare that I am the sole author of this thesis. This is a true copy of the thesis, includ...
One- and two-factor stochastic volatility models are assessed over three sets of stock returns data:...
Discrete-time stochastic volatility (SV) models have generated a considerable literature in financia...
We consider the stochastic volatility model with smooth transition and persistent la- tent factors....
An efficient method for Bayesian inference in stochastic volatility models uses a linear state space...
Stochastic volatility (SV) models provide a means of tracking and forecasting the variance of financ...
Publicado además en: Recent developments in Time Series, 2003, vol. 2, ISBN13: 9781840649512, pp....
Stochastic differential equations often provide a convenient way to describe the dynamics of economi...
In this paper we are concerned with non-parametric inference on the volatility of volatility proces...
Maximum likelihood has proved to be a valuable tool for fitting the log-normal stochastic volatility...
We consider Taylor's stochastic volatility model (SVM) when the innovations of the hidden log-volati...
We develop and implement a new method for maximum likelihood estimation in closed-form of stochastic...
Volatility is a crucial aspect of risk management and important to accurately quantify. A broad rang...
Although stochastic volatility (SV) models have an intuitive appeal, their empirical application has...
Estimation of stochastic volatility (SV) models is a formidable task because the presence of the lat...
I hereby declare that I am the sole author of this thesis. This is a true copy of the thesis, includ...
One- and two-factor stochastic volatility models are assessed over three sets of stock returns data:...
Discrete-time stochastic volatility (SV) models have generated a considerable literature in financia...
We consider the stochastic volatility model with smooth transition and persistent la- tent factors....
An efficient method for Bayesian inference in stochastic volatility models uses a linear state space...
Stochastic volatility (SV) models provide a means of tracking and forecasting the variance of financ...
Publicado además en: Recent developments in Time Series, 2003, vol. 2, ISBN13: 9781840649512, pp....
Stochastic differential equations often provide a convenient way to describe the dynamics of economi...
In this paper we are concerned with non-parametric inference on the volatility of volatility proces...