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Markov Chain Monte Carlo Methods, a survey with some frequent misunderstandings

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 Added by Christian P. Robert
 Publication date 2020
and research's language is English




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In this chapter, we review some of the most standard MCMC tools used in Bayesian computation, along with vignettes on standard misunderstandings of these approaches taken from Q &~As on the forum Cross-validated answered by the first author.



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