Title :
Gibbs sampler to stochastic volatility models
Author :
Simandl, Miroslav ; Soukup, Tomas
Author_Institution :
Dept. of Cybern., Univ. of West Bohemia, Pilsen, Czech Republic
Abstract :
A new technique for nonlinear state and parameter estimation of the discrete time stochastic volatility models in which the logarithm of the asset return conditional variance follows an autoregressive model has been developed. The Gibbs sampling algorithm is used to construct a Markov-chain simulation tool that reflects both inherent model variability and parameter uncertainty. The proposed chain converges to an equilibrium making it possible to summarize the distributions of the unobserved volatilities and the unknown model parameters. The non-Gaussian density of the log of squared innovations is advantageously modelled as a mixture of Gaussians.
Keywords :
Markov processes; asset management; autoregressive processes; discrete time systems; financial management; parameter estimation; stochastic systems; Gibbs sampler; Gibbs sampling algorithm; Markov chain simulation tool; asset return conditional variance; autoregressive model; discrete time stochastic volatility models; model variability; nonGaussian density; nonlinear state; parameter estimation; parameter uncertainty; Bayes methods; Biological system modeling; Estimation; Markov processes; Mathematical model; Monte Carlo methods; Numerical models; Bayesian approach; Gibbs sampler; Stochastic volatility models; financial econometrics; nonlinear estimation;
Conference_Titel :
Control Conference (ECC), 2001 European
Conference_Location :
Porto
Print_ISBN :
978-3-9524173-6-2