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Estimation of hyperbolic diffusion using the Markov chain Monte Carlo method
19
Citations
23
References
2004
Year
Volatility ModelingMarkov Chain Monte CarloTime Series EconometricsFinancial MathematicsHyperbolic DiffusionAsset PricingAnomalous DiffusionStatisticsFinancial EconometricsEconomicsHyperbolic Diffusion ModelFinanceHyperbolic DiffusionsMonte Carlo MethodDiffusion ProcessBusinessEconometricsDiffusion-based ModelingFinancial EngineeringHigh-frequency Financial Econometrics
Abstract In this paper we propose a Bayesian method to estimate the hyperbolic diffusion model. The approach is based on the Markov chain Monte Carlo (MCMC) method with the likelihood of the discretized process as the approximate posterior likelihood. We demonstrate that the MCMC method Provides a useful tool in analysing hyperbolic diffusions. In particular, quantities of posterior distributions obtained from the MCMC outputs can be used for statistical inference. The MCMC method based on the Milstein scheme is unsatisfactory. Our simulation study shows that the hyperbolic diffusion exhibits many of the stylized facts about asset returns documented in the discrete-time financial econometrics literature, such as the Taylor effect, a slowly declining autocorrelation function of the squared returns, and thick tails.
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