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The Alive Particle Filter and Its Use in Particle Markov Chain Monte Carlo
Authors:Pierre Del Moral  Ajay Jasra  Anthony Lee  Christopher Yau  Xiaole Zhang
Institution:1. School of Mathematics and Statistics, University of New South Wales, Sydney, New South Wales, Australia;2. Department of Statistics &3. Applied Probability, National University of Singapore, Singapore;4. Department of Statistics, University of Warwick, Coventry, UK;5. Department of Mathematics, Imperial College London, London, UK
Abstract:In the following article, we investigate a particle filter for approximating Feynman–Kac models with indicator potentials and we use this algorithm within Markov chain Monte Carlo (MCMC) to learn static parameters of the model. Examples of such models include approximate Bayesian computation (ABC) posteriors associated with hidden Markov models (HMMs) or rare-event problems. Such models require the use of advanced particle filter or MCMC algorithms to perform estimation. One of the drawbacks of existing particle filters is that they may “collapse,” in that the algorithm may terminate early, due to the indicator potentials. In this article, using a newly developed special case of the locally adaptive particle filter, we use an algorithm that can deal with this latter problem, while introducing a random cost per-time step. In particular, we show how this algorithm can be used within MCMC, using particle MCMC. It is established that, when not taking into account computational time, when the new MCMC algorithm is applied to a simplified model it has a lower asymptotic variance in comparison to a standard particle MCMC algorithm. Numerical examples are presented for ABC approximations of HMMs.
Keywords:Particle filters  Markov chain Monte Carlo  Feynman–Kac formulae  
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