Exponential models of autoregressive conditional heteroscedasticity (ARCH) are attractive in empirical analysis because they guarantee the non-negativity of volatility, and because they enable richer autoregressive dynamics. However, the currently available models exhibit stability only for a limited number of conditional densities, and the available estimation and inference methods in the case where the conditional density is unknown hold only under very specific and restrictive assumptions. Here, we provide results and simple methods that readily enables consistent estimation and inference of univariate and multivariate power log-GARCH models under very general and non-restrictive assumptions when the power is fixed, via vector ARMA repre...
Non-linear time series models, especially regime-switching models, have become increasingly popular ...
Estimation of large financial volatility models is plagued by the curse of dimensionality: As the di...
The asymptotic distribution of maximum likelihood estimators is derived for a class of exponential ...
Exponential models of autoregressive conditional heteroscedasticity (ARCH) are attractive in empiric...
Exponential models of Autoregressive Conditional Heteroscedasticity (ARCH) enable richer dynamics (e...
Exponential models of Autoregressive Conditional Heteroscedasticity (ARCH) enable richer dynamics (e...
Exponential models of Autoregressive Conditional Heteroscedasticity (ARCH) enable richer dynamics (e...
A general framework for the estimation and inference in univariate and multivariate Generalised log-...
This paper studies the probabilistic properties and the estimation of the asymmetric log-GARCH($p,q...
This paper provides a probabilistic and statistical comparison of the log-GARCH and EGARCH models, w...
Estimation of log-GARCH models via the ARMA representation is attractive because it enables a vast a...
In conditionally heteroskedastic models, the optimal prediction of powers, or logarithms, of the abs...
The asymptotic distribution of maximum likelihood estimators is derived for a class of exponential g...
Recently, volatility modeling has been a very active and extensive research area in empirical financ...
Non-linear time series models, especially regime-switching models, have become increasingly popular ...
Estimation of large financial volatility models is plagued by the curse of dimensionality: As the di...
The asymptotic distribution of maximum likelihood estimators is derived for a class of exponential ...
Exponential models of autoregressive conditional heteroscedasticity (ARCH) are attractive in empiric...
Exponential models of Autoregressive Conditional Heteroscedasticity (ARCH) enable richer dynamics (e...
Exponential models of Autoregressive Conditional Heteroscedasticity (ARCH) enable richer dynamics (e...
Exponential models of Autoregressive Conditional Heteroscedasticity (ARCH) enable richer dynamics (e...
A general framework for the estimation and inference in univariate and multivariate Generalised log-...
This paper studies the probabilistic properties and the estimation of the asymmetric log-GARCH($p,q...
This paper provides a probabilistic and statistical comparison of the log-GARCH and EGARCH models, w...
Estimation of log-GARCH models via the ARMA representation is attractive because it enables a vast a...
In conditionally heteroskedastic models, the optimal prediction of powers, or logarithms, of the abs...
The asymptotic distribution of maximum likelihood estimators is derived for a class of exponential g...
Recently, volatility modeling has been a very active and extensive research area in empirical financ...
Non-linear time series models, especially regime-switching models, have become increasingly popular ...
Estimation of large financial volatility models is plagued by the curse of dimensionality: As the di...
The asymptotic distribution of maximum likelihood estimators is derived for a class of exponential ...