Luc Bauwens
;
Christian M. Hafner
;
Diane Pierret
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multivariate volatility modeling of electricity futures (replication data)

We model the dynamic volatility and correlation structure of electricity futures of the European Energy Exchange index. We use a new multiplicative dynamic conditional correlation (mDCC) model to separate long-run from short-run components. We allow for smooth changes in the unconditional volatilities and correlations through a multiplicative component that we estimate nonparametrically. For the short-run dynamics, we use a GJR-GARCH model for the conditional variances and augmented DCC models for the conditional correlations. We also introduce exogenous variables to account for congestion and delivery date effects in short-term conditional variances. We find different correlation dynamics for long- and short-term contracts and the new model achieves higher forecasting performance compared \to a standard DCC model.

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Suggested Citation

Bauwens, Luc; Hafner, Christian M.; Pierret, Diane (2013): MULTIVARIATE VOLATILITY MODELING OF ELECTRICITY FUTURES (replication data). Version: 1. Journal of Applied Econometrics. Dataset. https://journaldata.zbw.eu/dataset/multivariate-volatility-modeling-of-electricity-futures?activity_id=4a0ea56c-e226-4698-974b-e92ebb1f7615