Corpus ID: 88517733

Likelihood-free Markov chain Monte Carlo

@inproceedings{Sisson2010LikelihoodfreeMC,
  title={Likelihood-free Markov chain Monte Carlo},
  author={Scott Anthony Sisson and Yalin Fan},
  year={2010}
}
  • Scott Anthony Sisson, Yalin Fan
  • Published 2010
  • Mathematics
  • To appear to MCMC handbook, S. P. Brooks, A. Gelman, G. Jones and X.-L. Meng (eds), Chapman & Hall. 

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