Abstract
In this article, we perform Bayesian estimation of stochastic volatility models with heavy tail distributions using Metropolis adjusted Langevin (MALA) and Riemman manifold Langevin (MMALA) methods. We provide analytical expressions for the application of these methods, assess the performance of these methodologies in simulated data, and illustrate their use on two financial time series datasets.
Original language | Spanish |
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Pages (from-to) | 7942-7956 |
Number of pages | 15 |
Journal | Communications in Statistics: Simulation and Computation |
Volume | 46 |
State | Published - 26 Nov 2017 |