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Marginal maximum a posteriori estimation using Markov chain Monte Carlo
Authors:Arnaud Doucet  Simon J Godsill  Christian P Robert
Abstract:Markov chain Monte Carlo (MCMC) methods, while facilitating the solution of many complex problems in Bayesian inference, are not currently well adapted to the problem of marginal maximum a posteriori (MMAP) estimation, especially when the number of parameters is large. We present here a simple and novel MCMC strategy, called State-Augmentation for Marginal Estimation (SAME), which leads to MMAP estimates for Bayesian models. We illustrate the simplicity and utility of the approach for missing data interpolation in autoregressive time series and blind deconvolution of impulsive processes.
Keywords:Bayesian computation  data augmentation  deconvolution  missing data  simulated annealing
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