Rossi, Eduardo and Spazzini, Filippo (2008): Model and distribution uncertainty in multivariate GARCH estimation: a Monte Carlo analysis.
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Abstract
Multivariate GARCH models are in principle able to accommodate the features of the dynamic conditional correlations processes, although with the drawback, when the number of financial returns series considered increases, that the parameterizations entail too many parameters.In general, the interaction between model parametrization of the second conditional moment and the conditional density of asset returns adopted in the estimation determines the fitting of such models to the observed dynamics of the data. This paper aims to evaluate the interactions between conditional second moment specifications and probability distributions adopted in the likelihood computation, in forecasting volatilities and covolatilities. We measure the relative performances of alternative conditional second moment and probability distributions specifications by means of Monte Carlo simulations, using both statistical and financial forecasting loss functions.
Item Type: | MPRA Paper |
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Original Title: | Model and distribution uncertainty in multivariate GARCH estimation: a Monte Carlo analysis |
Language: | English |
Keywords: | Multivariate GARCH models; Model uncertainty; Quasi-maximum likelihood; Monte Carlo methods |
Subjects: | C - Mathematical and Quantitative Methods > C3 - Multiple or Simultaneous Equation Models ; Multiple Variables > C32 - Time-Series Models ; Dynamic Quantile Regressions ; Dynamic Treatment Effect Models ; Diffusion Processes ; State Space Models C - Mathematical and Quantitative Methods > C5 - Econometric Modeling > C52 - Model Evaluation, Validation, and Selection C - Mathematical and Quantitative Methods > C0 - General > C01 - Econometrics |
Item ID: | 12260 |
Depositing User: | filippo spazzini |
Date Deposited: | 18 Dec 2008 16:09 |
Last Modified: | 28 Sep 2019 04:39 |
References: | Abramowitz, M., Stegun, I.A., 1965. Handbook of Mathematical Functions. National Bureau of Standards, Applied Mathematics Series 55, Dover Publications, sections 9.1.1, 9.1.89, and 9.12, formulas 9.1.10 and 9.2.5. Bauwens, L., Laurent, S., 2005. A New Class of Multivariate Skew Densities, With Application to Generalized Autoregressive Conditional Heteroscedasticity Models. Journal of Business & Economic Statistics, 23:346-354. Bollerslev, T., 1990. Modeling the Coherence in Short-Run Nominal Exchange Rates: A Multivariate Generalized ARCH Approach. Review of Economics and Statistics, 72:498- 505. Brailsford, T., Faff, R., 1996. An evaluation of volatility forecasting techniques. Journal of Banking & Finance, 20(3) 419-438. Cajigas, J.,Urga, G., Dynamic Conditional Correlation Models with Asymmetric Multivariate Laplace Innovations. Mimeo. (Cass Business School, City University, 2007). Danielsson, J., 1998. Multivariate Stochastic Volatility Models: Estimation and Comparison with VGARCH models. Journal of Empirical Finance, 5 155-173. Engle, R., 2002. Dynamic Conditional Correlation-A simple class of multivariate GARCH models. Journal of Business and Economic Statistics, 20(3) 339-350(12). Engle, R., Kroner, K., 1995. Multivariate simultaneous GARCH, Econometric theory, 11 122-150. Engle, R., Manganelli, S., 1999. CAViaR: Conditional Value at Risk by Quantile Regression. NBER Working Papers, 7341. Fiorentini, G., Sentana, E., Calzolari, G., 2003. Maximum likelihood estimation and inference in multivariate conditionally heteroskedastic dynamic regression models with Student t innovations. Journal of Business and Economic Statistics, 21 532546. Harvey, A.C., Ruiz, E., Shephard, N., 1992. Unobservable component time series models with ARCH disturbances. Journal of Econometrics, 52 129158. Lee, P., 2003. The generalized lambda distribution applied to spot exchange rates, PhD Thesis,Department of Statistics, Carnegie Mellon University. Patton, A., Sheppard, K., 2008. Evaluating Volatility and Correlation Forecasts, Oxford Financial Research Centre, OFRC Working Papers Series. Serban, M., Brockwell, A., Lehoczky, J., Srivastava, S., 2007. Modelling the Dynamic Dependence Structure in Multivariate Financial Time Series. Journal of Time Series Analysis, 28(5) 763-782. Shephard, N., Andersen, T., 2008. Stochastic Volatility: Origins and Overview. In T. Andersen (Ed.), Handbook of financial time series, Springer Verlag. Sklar A., 1959. Fonctions de repartition `a n dimensions et leurs marges. Publications de l’Institut de Statistique de L’Universit´e de Paris, 8 229-231. |
URI: | https://mpra.ub.uni-muenchen.de/id/eprint/12260 |