Augmentation Schemes for Particle MCMC
Paul Fearnhead, Loukia Meligkotsidou

TL;DR
This paper introduces a generalized particle MCMC framework that incorporates latent variables modeled as pseudo-observations, enhancing efficiency and mixing in complex stochastic models.
Contribution
It proposes a novel approach to particle MCMC by introducing latent variables as pseudo-observations, improving algorithm performance and flexibility.
Findings
Improves particle filter initialization
Speeds up particle Gibbs mixing
Enables additional MCMC steps within particle filter
Abstract
Particle MCMC involves using a particle filter within an MCMC algorithm. For inference of a model which involves an unobserved stochastic process, the standard implementation uses the particle filter to propose new values for the stochastic process, and MCMC moves to propose new values for the parameters. We show how particle MCMC can be generalised beyond this. Our key idea is to introduce new latent variables. We then use the MCMC moves to update the latent variables, and the particle filter to propose new values for the parameters and stochastic process given the latent variables. A generic way of defining these latent variables is to model them as pseudo-observations of the parameters or of the stochastic process. By choosing the amount of information these latent variables have about the parameters and the stochastic process we can often improve the mixing of the particle MCMC…
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