Financial returns exhibit conditional heteroscedasticity, asymmetric responses of their volatility to negative and positive returns (leverage effects) and fat tails. The αα-stable distribution is a natural candidate for capturing the tail-thickness of the conditional distribution of financial returns, while the GARCH-type models are very popular in depicting the conditional heteroscedasticity and leverage effects. However, practical implementation of αα-stable distribution in finance applications has been limited by its estimation difficulties. The performance of the indirect inference approach using GARCH models with Student’s tt distributed errors as auxiliary models is compared to the maximum likelihood approach for estimating GARCH-type...
Generalized autoregressive conditional heteroskedastic (GARCH) model is a standard approach to study...
A fast method for estimating the parameters of a stable-APARCH not requiring likelihood or iteration...
A fast method for estimating the parameters of a stable-APARCH not requiring likelihood or iteration...
It is a well-known fact that financial returns exhibit conditional heteroscedasticity and fat tails....
The α-stable family of distributions constitutes a generalization of the Gaus-sian distribution, all...
Although the GARCH model has been quite successful in capturing important empirical aspects of finan...
Recently, volatility modeling has been a very active and extensive research area in empirical financ...
High frequency data exhibit non-constant variance. This paper models the exhibited fluctuations via ...
Several studies have highlighted the fact that heavy-tailedness of asset returns can be the conseque...
Recently, volatility modeling has been a very active and extensive research area in empirical financ...
The focus of this paper is the use of stable distributions for GARCH models. Such models are applied...
The focus of this paper is the use of stable distributions for GARCH models. Such models are applied...
The alpha-stable family of distributions constitutes a generalization of the Gaussian distribution, ...
The use of GARCH models with stable Paretian innovations in financial modeling has been recently sug...
A fast method for estimating the parameters of a stable-APARCH not requiring likelihood or iteration...
Generalized autoregressive conditional heteroskedastic (GARCH) model is a standard approach to study...
A fast method for estimating the parameters of a stable-APARCH not requiring likelihood or iteration...
A fast method for estimating the parameters of a stable-APARCH not requiring likelihood or iteration...
It is a well-known fact that financial returns exhibit conditional heteroscedasticity and fat tails....
The α-stable family of distributions constitutes a generalization of the Gaus-sian distribution, all...
Although the GARCH model has been quite successful in capturing important empirical aspects of finan...
Recently, volatility modeling has been a very active and extensive research area in empirical financ...
High frequency data exhibit non-constant variance. This paper models the exhibited fluctuations via ...
Several studies have highlighted the fact that heavy-tailedness of asset returns can be the conseque...
Recently, volatility modeling has been a very active and extensive research area in empirical financ...
The focus of this paper is the use of stable distributions for GARCH models. Such models are applied...
The focus of this paper is the use of stable distributions for GARCH models. Such models are applied...
The alpha-stable family of distributions constitutes a generalization of the Gaussian distribution, ...
The use of GARCH models with stable Paretian innovations in financial modeling has been recently sug...
A fast method for estimating the parameters of a stable-APARCH not requiring likelihood or iteration...
Generalized autoregressive conditional heteroskedastic (GARCH) model is a standard approach to study...
A fast method for estimating the parameters of a stable-APARCH not requiring likelihood or iteration...
A fast method for estimating the parameters of a stable-APARCH not requiring likelihood or iteration...