This paper introduces the scalar DCC-HEAVY and DECO-HEAVY models for conditional variances and correlations of daily returns based on measures of realized variances and correlations built from intraday data. Formulas for multi-step forecasts of conditional variances and correlations are provided. Asymmetric versions of the models are developed. An empirical study shows that in terms of forecasts the scalar HEAVY models outperform the scalar BEKK-HEAVY model based on realized covariances and the scalar BEKK, DCC, and DECO multivariate GARCH models based exclusively on daily data
This paper addresses the question of the selection of multivariate GARCH models in terms of variance...
Multivariate GARCH models do not perform well in large dimensions due to the so-called curse of dime...
The management and monitoring of very large portfolios of financial assets are routine for many indi...
This paper introduces the scalar DCC-HEAVY and DECO-HEAVY models for conditional variances and corre...
Time varying correlations are often estimated with Multivariate Garch models that are linear in squa...
Time varying correlations are often estimated with Multivariate Garch models that are linear in squa...
In this paper, we develop the theoretical and empirical properties of a new class of multivariate GA...
Time varying correlations are often estimated with Multivariate Garch models that are linear in squa...
Large one-off events cause large changes in prices, but may not affect the volatility and correlatio...
The paper develops two Dynamic Conditional Correlation (DCC) models, namely the Wishart DCC (WDCC) m...
2014 - 2015Estimating and predicting joint second-order moments of asset portfolios is of huge impor...
In this paper, we develop the theoretical and empirical properties of a new class of multi-variate G...
Correlation, volatility, and covariance are three important metrics of financial risk. They are key ...
Modelling and forecasting high dimensional covariance matrices is a key challenge in data-richenviro...
Multivariate GARCH models do not perform well in large dimensions due to the so-called curse of dime...
This paper addresses the question of the selection of multivariate GARCH models in terms of variance...
Multivariate GARCH models do not perform well in large dimensions due to the so-called curse of dime...
The management and monitoring of very large portfolios of financial assets are routine for many indi...
This paper introduces the scalar DCC-HEAVY and DECO-HEAVY models for conditional variances and corre...
Time varying correlations are often estimated with Multivariate Garch models that are linear in squa...
Time varying correlations are often estimated with Multivariate Garch models that are linear in squa...
In this paper, we develop the theoretical and empirical properties of a new class of multivariate GA...
Time varying correlations are often estimated with Multivariate Garch models that are linear in squa...
Large one-off events cause large changes in prices, but may not affect the volatility and correlatio...
The paper develops two Dynamic Conditional Correlation (DCC) models, namely the Wishart DCC (WDCC) m...
2014 - 2015Estimating and predicting joint second-order moments of asset portfolios is of huge impor...
In this paper, we develop the theoretical and empirical properties of a new class of multi-variate G...
Correlation, volatility, and covariance are three important metrics of financial risk. They are key ...
Modelling and forecasting high dimensional covariance matrices is a key challenge in data-richenviro...
Multivariate GARCH models do not perform well in large dimensions due to the so-called curse of dime...
This paper addresses the question of the selection of multivariate GARCH models in terms of variance...
Multivariate GARCH models do not perform well in large dimensions due to the so-called curse of dime...
The management and monitoring of very large portfolios of financial assets are routine for many indi...