We propose a new multivariate factor GARCH model, the GICA-GARCH model , where the data are assumed to be generated by a set of independent components (ICs). This model applies independent component analysis (ICA) to search the conditionally heteroskedastic latent factors. We will use two ICA approaches to estimate the ICs. The first one estimates the components maximizing their non-gaussianity, and the second one exploits the temporal structure of the data. After estimating the ICs, we fit an univariate GARCH model to the volatility of each IC. Thus, the GICA-GARCH reduces the complexity to estimate a multivariate GARCH model by transforming it into a small number of univariate volatility models. We report some simulation experimen...
In the independent component model, the multivariate data are assumed to be a mixture of mutually in...
Summary A new multivariate time series model with time varying conditional variances and covariances...
This thesis is a study of stock volatility adopting two factor volatility models for large datasets:...
We propose a new multivariate factor GARCH model, the GICA-GARCH model , where the data are assumed...
Volatility modelling of asset returns is an important aspect for many financial applications, e.g., ...
In practice, the application and extension of the ICA model depend on the problem and the data to be...
We develop an estimation method for the Diagonal Multivariate GARCH model. For a vector of size N un...
We propose a new model for volatility forecasting which combines the Generalized Dynamic Factor Mode...
We suggest using independent component analysis (ICA) to decompose multivariate time series into sta...
A new multivariate time series model with time varying conditional variances and covariances is pres...
The goal of this paper is to estimate time-varying covariance matrices.Since the covariance matrix o...
This paper addresses the question of the selection of multivariate generalized autoregressive condit...
This paper shows how independent component analysis can be used to estimate the generalized orthogon...
A new approach is proposed to estimate a large class of multivariate volatility models. The method ...
The authors propose a simplified multivariate GARCH (generalized autoregressive conditional heterosc...
In the independent component model, the multivariate data are assumed to be a mixture of mutually in...
Summary A new multivariate time series model with time varying conditional variances and covariances...
This thesis is a study of stock volatility adopting two factor volatility models for large datasets:...
We propose a new multivariate factor GARCH model, the GICA-GARCH model , where the data are assumed...
Volatility modelling of asset returns is an important aspect for many financial applications, e.g., ...
In practice, the application and extension of the ICA model depend on the problem and the data to be...
We develop an estimation method for the Diagonal Multivariate GARCH model. For a vector of size N un...
We propose a new model for volatility forecasting which combines the Generalized Dynamic Factor Mode...
We suggest using independent component analysis (ICA) to decompose multivariate time series into sta...
A new multivariate time series model with time varying conditional variances and covariances is pres...
The goal of this paper is to estimate time-varying covariance matrices.Since the covariance matrix o...
This paper addresses the question of the selection of multivariate generalized autoregressive condit...
This paper shows how independent component analysis can be used to estimate the generalized orthogon...
A new approach is proposed to estimate a large class of multivariate volatility models. The method ...
The authors propose a simplified multivariate GARCH (generalized autoregressive conditional heterosc...
In the independent component model, the multivariate data are assumed to be a mixture of mutually in...
Summary A new multivariate time series model with time varying conditional variances and covariances...
This thesis is a study of stock volatility adopting two factor volatility models for large datasets:...