GARCH-type models have been analyzed assuming various nongaussian dis- tributions of errors. In general, the asymmetric generalized Student-t random variable seems to be the distribution which better captures the nonnormality features of financial data. However, a drawback of this distribution is repre- sented by the technical dificulties due to the evaluation of moments, especially in the case of fractional degrees of freedom. In this paper we propose to model high frequency time series returns using GARCH-type models with a gener- alized secant hyperbolic (GSH) distribution. The main advantage of the GSH distribution over the Student-t distribution is that all the moments are finite for each value of the shape parameter. The dist...
GARCH models and Stochastic Volatility (SV) models can both be used to describe unobserved volatilit...
The daily returns from financial market variables, such as stock indices, exhibit empirical distribu...
This paper analyzes the out-of-sample ability of different parametric and semiparametric GARCH-type ...
GARCH-type models have been analyzed assuming various nongaussian dis- tributions of errors. In gen...
High frequency data exhibit non-constant variance. This paper models the exhibited fluctuations via ...
We establish a relation between stochastic volatility models and the class of generalized hyperbolic...
The GARCH (p, q) model is a very interesting stochastic process with widespread applications and a c...
Knowledge of the dynamic properties and the higher moments of the distribution of returns on financi...
It is a well-known fact that financial returns exhibit conditional heteroscedasticity and fat tails....
This paper examines and estimate the three GARCH(1,1) models (GARCH, EGARCH and GJR-GARCH) using the...
Although the GARCH model has been quite successful in capturing important empirical aspects of finan...
Financial returns are often modelled as autoregressive time series with random disturbances having c...
Financial returns are often modelled as autoregressive time series with random disturbances having c...
AbstractGeneralized autoregressive conditional heteroskedasticity (GARCH) models having normal or St...
Conditional returns distributions generated by a GARCH process, which are important for many problem...
GARCH models and Stochastic Volatility (SV) models can both be used to describe unobserved volatilit...
The daily returns from financial market variables, such as stock indices, exhibit empirical distribu...
This paper analyzes the out-of-sample ability of different parametric and semiparametric GARCH-type ...
GARCH-type models have been analyzed assuming various nongaussian dis- tributions of errors. In gen...
High frequency data exhibit non-constant variance. This paper models the exhibited fluctuations via ...
We establish a relation between stochastic volatility models and the class of generalized hyperbolic...
The GARCH (p, q) model is a very interesting stochastic process with widespread applications and a c...
Knowledge of the dynamic properties and the higher moments of the distribution of returns on financi...
It is a well-known fact that financial returns exhibit conditional heteroscedasticity and fat tails....
This paper examines and estimate the three GARCH(1,1) models (GARCH, EGARCH and GJR-GARCH) using the...
Although the GARCH model has been quite successful in capturing important empirical aspects of finan...
Financial returns are often modelled as autoregressive time series with random disturbances having c...
Financial returns are often modelled as autoregressive time series with random disturbances having c...
AbstractGeneralized autoregressive conditional heteroskedasticity (GARCH) models having normal or St...
Conditional returns distributions generated by a GARCH process, which are important for many problem...
GARCH models and Stochastic Volatility (SV) models can both be used to describe unobserved volatilit...
The daily returns from financial market variables, such as stock indices, exhibit empirical distribu...
This paper analyzes the out-of-sample ability of different parametric and semiparametric GARCH-type ...