Advanced MCMC methods for sampling on diffusion pathspace
The need to calibrate increasingly complex statistical models requires a persistent effort for further advances on available, computationally intensive Monte-Carlo methods. We study here an advanced version of familiar Markov-chain Monte-Carlo (MCMC) algorithms that sample from target distributions defined as change of measures from Gaussian laws on general Hilbert spaces. Such a model structure arises in several contexts: we focus here at the important class of statistical models driven by diffusion paths whence the Wiener process constitutes the reference Gaussian law. Particular emphasis is given on advanced Hybrid Monte-Carlo (HMC) which makes large, derivative driven steps in the state space (in contrast with local-move Random-walk-type algorithms) with analytical and experimental results. We illustrate it’s computational advantages in various diffusion processes and observation regimes; examples include stochastic volatility and latent survival models. In contrast with their standard MCMC counterparts, the advanced versions have mesh-free mixing times, as these will not deteriorate upon refinement of the approximation of the inherently infinite-dimensional diffusion paths by finite-dimensional ones used in practice when applying the algorithms on a computer.
| Item Type | Article |
|---|---|
| Keywords | Gaussian measure,diffusion process,covariance operator,Hamiltonian dynamics,mixing time,stochastic volatility. |
| Departments | Statistics |
| DOI | 10.1016/j.spa.2012.12.001 |
| Date Deposited | 05 Dec 2012 09:17 |
| URI | https://researchonline.lse.ac.uk/id/eprint/46433 |
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