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  1. Pubblicazioni

Improving the forecasting of dynamic conditional correlation: a volatility dependent approach

Libro
Data di Pubblicazione:
2009
Citazione:
Improving the forecasting of dynamic conditional correlation: a volatility dependent approach / Otranto, Edoardo. - 2009:17(2009), p. 18.
Abstract:
Forecasting volatility in a multivariate framework has received many contributions in the recent literature, but problems in estimation are still frequently encountered
when dealing with a large set of time series. The Dynamic Conditional Correlation (DCC) modeling is probably the most used approach; it has the advantage of separating the estimation of the volatility of each time series (with great flexibility, using single univariate models) and the correlation part (with the strong constraint imposing the same dynamics to all the correlations). We propose a modification to the DCC model, providing different dynamics for each correlation, simply hypothesizing a dependence on the volatility structure of each time series. This new model
implies adding only two parameters with respect to the original DCC model. Its performance is evaluated in terms of out-of-sample forecasts with respect to the DCC
models and other multivariate GARCH models. The results on four data sets seem to favor the new model.
Tipologia CRIS:
3.1 Monografia o trattato scientifico
Keywords:
Dynamic conditional correlation; GARCH distance; multivariate GARCH; out-of-sample forecasts
Elenco autori:
Otranto, Edoardo
Autori di Ateneo:
OTRANTO Edoardo
Link alla scheda completa:
https://iris.uniss.it/handle/11388/261697
Link al Full Text:
https://iris.uniss.it//retrieve/handle/11388/261697/193691/Otranto_E_Improving_the_forecasting_of.pdf
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