Time series of realized covariance matrices can be modelled in the conditional au- toregressive Wishart model family via dynamic correlations or via dynamic covari- ances. Extended parameterizations of these models are proposed, which imply a specific and time-varying impact parameter of the lagged realized covariance (or correlation) on the next conditional covariance (or correlation) of each asset pair. The proposed extensions guarantee the positive definiteness of the conditional co- variance or correlation matrix with simple parametric restrictions, while keeping the number of parameters fixed or linear with respect to the number of assets. Two empirical studies reveal that the extended models have superior forecasting performances than their simpler versions and benchmark models.
Modelling Realized Covariance Matrices: a Class of Hadamard Exponential Models
Edoardo Otranto
2022-01-01
Abstract
Time series of realized covariance matrices can be modelled in the conditional au- toregressive Wishart model family via dynamic correlations or via dynamic covari- ances. Extended parameterizations of these models are proposed, which imply a specific and time-varying impact parameter of the lagged realized covariance (or correlation) on the next conditional covariance (or correlation) of each asset pair. The proposed extensions guarantee the positive definiteness of the conditional co- variance or correlation matrix with simple parametric restrictions, while keeping the number of parameters fixed or linear with respect to the number of assets. Two empirical studies reveal that the extended models have superior forecasting performances than their simpler versions and benchmark models.Pubblicazioni consigliate
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