The empirical application of Stochastic Volatility (SV) models has been limited due to the difficulties involved in the evaluation of the likelihood function. However, recently there has been fundamental progress in this area due to the proposal of several new estimation methods that try to overcome this problem, being at the same time, empirically feasible. As a consequence, several extensions of the SV models have been proposed and their empirical implementation is increasing. In this paper, we review the main estimators of the parameters and the volatility of univariate SV models proposed in the literature. We describe the main advantages and limitations of each of the methods both from the theoretical and empirical point of view. We com...
An indirect estimator of the stochastic volatility (SV) model with AR(1) log-volatility is proposed....
AbstractFor estimation of the stochastic volatility model (SVM), this paper suggests the quasi-likel...
Techniques for simulated maximum likelihood (SML) estimation, filtering, and assessing the fit of st...
The empirical application of Stochastic Volatility (SV) models has been limited due to the difficult...
In this paper we present an exact maximum likelihood treatment for the estimation of a Stochastic Vo...
Stochastic volatility models have been focus for research in recent years. One interesting and impor...
Estimation of stochastic volatility (SV) models is a formidable task because the presence of the lat...
For the purpose of modelling and prediction of volatility, the family of Stochastic Volatility (SV) ...
This paper presents a Monte Carlo maximum likelihood method of estimating Stochastic Volatility (SV)...
Stochastic volatility (SV) models provide a means of tracking and forecasting the variance of financ...
(The thesis contains 264310 characters incl. spaces, which corresponds to 106 normal pages) Continuo...
This paper prepared for the Handbook of Statistics (Vol.14: Statistical Methods in Finance), surveys...
One- and two-factor stochastic volatility models are assessed over three sets of stock returns data:...
This paper proposes an improved procedure for stochastic volatility model estimation with an applica...
For estimation of the stochastic volatility model (SVM), this paper suggests the quasi-likelihood (Q...
An indirect estimator of the stochastic volatility (SV) model with AR(1) log-volatility is proposed....
AbstractFor estimation of the stochastic volatility model (SVM), this paper suggests the quasi-likel...
Techniques for simulated maximum likelihood (SML) estimation, filtering, and assessing the fit of st...
The empirical application of Stochastic Volatility (SV) models has been limited due to the difficult...
In this paper we present an exact maximum likelihood treatment for the estimation of a Stochastic Vo...
Stochastic volatility models have been focus for research in recent years. One interesting and impor...
Estimation of stochastic volatility (SV) models is a formidable task because the presence of the lat...
For the purpose of modelling and prediction of volatility, the family of Stochastic Volatility (SV) ...
This paper presents a Monte Carlo maximum likelihood method of estimating Stochastic Volatility (SV)...
Stochastic volatility (SV) models provide a means of tracking and forecasting the variance of financ...
(The thesis contains 264310 characters incl. spaces, which corresponds to 106 normal pages) Continuo...
This paper prepared for the Handbook of Statistics (Vol.14: Statistical Methods in Finance), surveys...
One- and two-factor stochastic volatility models are assessed over three sets of stock returns data:...
This paper proposes an improved procedure for stochastic volatility model estimation with an applica...
For estimation of the stochastic volatility model (SVM), this paper suggests the quasi-likelihood (Q...
An indirect estimator of the stochastic volatility (SV) model with AR(1) log-volatility is proposed....
AbstractFor estimation of the stochastic volatility model (SVM), this paper suggests the quasi-likel...
Techniques for simulated maximum likelihood (SML) estimation, filtering, and assessing the fit of st...