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Sequentially interacting Markov chain Monte Carlo methods

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arxiv 1211.2582 v1 pith:TKFYQB2K submitted 2012-11-12 math.ST stat.TH

Sequentially interacting Markov chain Monte Carlo methods

classification math.ST stat.TH
keywords carlointeractingmarkovmontesimcmcchaindistributionsmethodology
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Sequential Monte Carlo (SMC) is a methodology for sampling approximately from a sequence of probability distributions of increasing dimension and estimating their normalizing constants. We propose here an alternative methodology named Sequentially Interacting Markov Chain Monte Carlo (SIMCMC). SIMCMC methods work by generating interacting non-Markovian sequences which behave asymptotically like independent Metropolis-Hastings (MH) Markov chains with the desired limiting distributions. Contrary to SMC, SIMCMC allows us to iteratively improve our estimates in an MCMC-like fashion. We establish convergence results under realistic verifiable assumptions and demonstrate its performance on several examples arising in Bayesian time series analysis.

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