In this recipe, we cover an extension of the CCC-GARCH model: Engle's Dynamic Conditional Correlation GARCH (DCC-GARCH) model. The main difference between the two is that in the latter, the conditional correlation matrix is not constant over time—we have Rt instead of R.
There are some nuances in terms of estimation, but the outline is similar to the CCC-GARCH model:
- Estimate the univariate GARCH models for conditional volatility
- Estimate the DCC model for conditional correlations
In the second step of estimating the DCC model, we use a new matrix Qt, representing a proxy correlation process.
The first equation describes the relationship between the conditional correlation matrix Rt and the proxy process Qt. The second equation represents the dynamics of the proxy process. The last equation shows...