Stochastic volatility modelling in continuous time with general marginal distributions: Inference,prediction and model selection |
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Authors: | Matthew P.S. Gander David A. Stephens |
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Affiliation: | Department of Mathematics, Imperial College London, UK |
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Abstract: | We compare results for stochastic volatility models where the underlying volatility process having generalized inverse Gaussian (GIG) and tempered stable marginal laws. We use a continuous time stochastic volatility model where the volatility follows an Ornstein–Uhlenbeck stochastic differential equation driven by a Lévy process. A model for long-range dependence is also considered, its merit and practical relevance discussed. We find that the full GIG and a special case, the inverse gamma, marginal distributions accurately fit real data. Inference is carried out in a Bayesian framework, with computation using Markov chain Monte Carlo (MCMC). We develop an MCMC algorithm that can be used for a general marginal model. |
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Keywords: | 60G51 62F15 62M10 62P05 65C40 90-08 |
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