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Estimating stochastic volatility models using integrated nested Laplace approximations
Authors:Sara Martino  Ola Lindqvist  Linda R Neef  Håvard Rue
Institution:1. Department of Mathematical Science , Norwegian University of Science and Technology , Alfred Getz’ vei 1, 7034, Trondheim, Norway;2. Norwegian Computing Center , Gaustadalléen 23, PO Box 114 Blindern, NO-0314, Oslo, Norway
Abstract:Volatility in financial time series is mainly analysed through two classes of models; the generalized autoregressive conditional heteroscedasticity (GARCH) models and the stochastic volatility (SV) ones. GARCH models are straightforward to estimate using maximum-likelihood techniques, while SV models require more complex inferential and computational tools, such as Markov Chain Monte Carlo (MCMC). Hence, although provided with a series of theoretical advantages, SV models are in practice much less popular than GARCH ones. In this paper, we solve the problem of inference for some SV models by applying a new inferential tool, integrated nested Laplace approximations (INLAs). INLA substitutes MCMC simulations with accurate deterministic approximations, making a full Bayesian analysis of many kinds of SV models extremely fast and accurate. Our hope is that the use of INLA will help SV models to become more appealing to the financial industry, where, due to their complexity, they are rarely used in practice.
Keywords:approximate Bayesian inference  Laplace approximation  latent Gaussian models  stochastic volatility model
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