An asymmetric multivariate generalization of the recently proposed class of normal mixture GARCH models is developed. Issues of parametrization and estimation are discussed. Conditions for covariance stationarity and the existence of the fourth moment are derived, and expressions for the dynamic correlation structure of the process are provided. In an application to stock market returns, it is shown that the disaggregation of the conditional (co)variance process generated by the model provides substantial intuition. Moreover, the model exhibits a strong performance in calculating out-of-sample Value-at-Risk measures.
Both unconditional mixed normal distributions and GARCH models with fat-tailed conditional distribut...
A new model class for univariate asset returns is proposed which involves the use of mixtures of sta...
In this paper, we develop the theoretical and empirical properties of a new class of multivariate GA...
An asymmetric multivariate generalization of the recently proposed class of normal mixture GARCH mod...
Abstract The class of Multivariate BiLinear GARCH (MBL-GARCH) models is proposed and its statistica...
Various univariate and multivariate models of volatility have been used to evaluate market risk, asy...
Abstract: The univariate Generalised Autoregressive Conditional Heterscedasticity (GARCH) model has ...
This paper introduces skew-normal (SN) mixture and Markov-switching (MS) GARCH processes for capturi...
The class of Multivariate BiLinear GARCH (MBL-GARCH) models is proposed and its statistical propert...
We present a multivariate generalization of the mixed normal GARCH model proposed in Haas, Mittnik, ...
This paper proposes a new parsimonious multivariate GARCH-jump (MGARCH-jump) mixture model with mul...
The purpose of this study is to test predictive performance of Asymmetric Normal Mixture GARCH (NMAG...
This paper investigates the relative performance of the asymmetric normal mixture generalized autore...
A new multivariate volatility model where the conditional distribution of a vector time series is gi...
Abstract: DAMGARCH extends the VARMA-GARCH model of Ling and McAleer (2003) by introducing multiple ...
Both unconditional mixed normal distributions and GARCH models with fat-tailed conditional distribut...
A new model class for univariate asset returns is proposed which involves the use of mixtures of sta...
In this paper, we develop the theoretical and empirical properties of a new class of multivariate GA...
An asymmetric multivariate generalization of the recently proposed class of normal mixture GARCH mod...
Abstract The class of Multivariate BiLinear GARCH (MBL-GARCH) models is proposed and its statistica...
Various univariate and multivariate models of volatility have been used to evaluate market risk, asy...
Abstract: The univariate Generalised Autoregressive Conditional Heterscedasticity (GARCH) model has ...
This paper introduces skew-normal (SN) mixture and Markov-switching (MS) GARCH processes for capturi...
The class of Multivariate BiLinear GARCH (MBL-GARCH) models is proposed and its statistical propert...
We present a multivariate generalization of the mixed normal GARCH model proposed in Haas, Mittnik, ...
This paper proposes a new parsimonious multivariate GARCH-jump (MGARCH-jump) mixture model with mul...
The purpose of this study is to test predictive performance of Asymmetric Normal Mixture GARCH (NMAG...
This paper investigates the relative performance of the asymmetric normal mixture generalized autore...
A new multivariate volatility model where the conditional distribution of a vector time series is gi...
Abstract: DAMGARCH extends the VARMA-GARCH model of Ling and McAleer (2003) by introducing multiple ...
Both unconditional mixed normal distributions and GARCH models with fat-tailed conditional distribut...
A new model class for univariate asset returns is proposed which involves the use of mixtures of sta...
In this paper, we develop the theoretical and empirical properties of a new class of multivariate GA...