Francesco Violante
Université catholique de Louvain
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Publication
Featured researches published by Francesco Violante.
Journal of Econometrics | 2013
Sébastien Laurent; Jeroen V.K. Rombouts; Francesco Violante
A large number of parameterizations have been proposed to model conditional variance dynamics in a multivariate framework. However, little is known about the ranking of multivariate volatility models in terms of their forecasting ability. The ranking of multivariate volatility models is inherently problematic because it requires the use of a proxy for the unobservable volatility matrix and this substitution may severely affect the ranking. We address this issue by investigating the properties of the ranking with respect to alternative statistical loss functions used to evaluate model performances. We provide conditions on the functional form of the loss function that ensure the proxy-based ranking to be consistent for the true one – i.e., the ranking that would be obtained if the true variance matrix was observable. We identify a large set of loss functions that yield a consistent ranking. In a simulation study, we sample data from a continuous time multivariate diffusion process and compare the ordering delivered by both consistent and inconsistent loss functions. We further discuss the sensitivity of the ranking to the quality of the proxy and the degree of similarity between models. An application to three foreign exchange rates, where we compare the forecasting performance of 16 multivariate GARCH specifications, is provided.
Econometric Theory | 2017
Christian M. Hafner; Sébastien Laurent; Francesco Violante
The properties of dynamic conditional correlation (DCC) models, introduced more than a decade ago, are still not entirely known. This paper fills one of the gaps by deriving weak diffusion limits of a modified version of the classical DCC model. The limiting system of stochastic differential equations is characterized by a diffusion matrix of reduced rank. The degeneracy is due to perfect collinearity between the innovations of the volatility and correlation dynamics. For the special case of constant conditional correlations, a non-degenerate diffusion limit can be obtained. Alternative sets of conditions are considered for the rate of convergence of the parameters, obtaining time-varying but deterministic variances and/or correlations. A Monte Carlo experiment confirms that the often used quasi approximate maximum likelihood (QAML) method to estimate the diffusion parameters is inconsistent for any fixed frequency, but that it may provide reasonable approximations for sufficiently large frequencies and sample sizes.
Wiley Interdisciplinary Reviews: Computational Statistics | 2012
Sébastien Laurent; Francesco Violante
Journal of Applied Econometrics | 2012
Sébastien Laurent; Jeroen V.K. Rombouts; Francesco Violante
Energy Policy | 2015
María Eugenia Sanin; Francesco Violante; Maria Mansanet-Bataller
Archive | 2009
Maria Eugenia Sanin Vazquez; Francesco Violante
Archive | 2009
Sébastien Laurent; Jeroen V.K. Rombouts; Francesco Violante
International Journal of Forecasting | 2014
Jeroen V.K. Rombouts; Lars Stentoft; Francesco Violante
Wiley Interdisciplinary Reviews: Computational Statistics | 2012
Sébastien Laurent; Francesco Violante
Social Science Research Network | 2017
Andrea Barletta; Paolo Santucci de Magistris; Francesco Violante