Sampling-based Inference of Time Deformation Models with Heavy Tail Distributions |
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Authors: | Zhongxian Men Adam W Kolkiewicz |
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Institution: | Department of Statistics and Actuarial Science, University of Waterloo, Waterloo, Ontario, Canada |
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Abstract: | This article focuses on simulation-based inference for the time-deformation models directed by a duration process. In order to better capture the heavy tail property of the time series of financial asset returns, the innovation of the observation equation is subsequently assumed to have a Student-t distribution. Suitable Markov chain Monte Carlo (MCMC) algorithms, which are hybrids of Gibbs and slice samplers, are proposed for estimation of the parameters of these models. In the algorithms, the parameters of the models can be sampled either directly from known distributions or through an efficient slice sampler. The states are simulated one at a time by using a Metropolis-Hastings method, where the proposal distributions are sampled through a slice sampler. Simulation studies conducted in this article suggest that our extended models and accompanying MCMC algorithms work well in terms of parameter estimation and volatility forecast. |
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Keywords: | Bayesian inference Leverage effect Markov Chain Monte Carlo Probability integral transform Slice sampler Time-deformation model |
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