Tesis
Métodos de Monte Carlo Hamiltoniano aplicados em modelos GARCH
Fecha
2019-04-26Registro en:
Autor
Xavier, Cleber Martins
Institución
Resumen
One of the most important informations in financial market is variability of an asset. Several
models have been proposed in literature with a view of to evaluate this phenomenon. Among
them we have the GARCH models. This paper use Hamiltonian Monte Carlo (HMC) methods
for estimation of parameters univariate and multivariate GARCH models. Simulation studies are
performed and the estimatives compared with Metropolis-Hastings methods of the BayesDcc-
Garch package. Also, we compared the results of HMC method with the methodology present in
rstan package. Finally, a application with real data is performed using bivariate DCC-GARCH
and the methods of estimation HMC and Metropolis-Hastings.