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Communication Dans Un Congrès Année : 2007

Bayesian numerical inference for hidden Markov models

Fabien Campillo
Vivien Rossi

Résumé

In many situations it is important to be able to propose N independent real- izations of a given distribution law. We propose a strategy for making N parallel Monte Carlo Markov Chains (MCMC) interact in order to get an approximation of an indepen- dent N-sample of a given target law. In this method each individual chain proposes can- didates for all other chains. We prove that the set of interacting chains is itself a MCMC method for the product of N target measures. Compared to independent parallel chains this method is more time consuming, but we show through examples that it possesses many advantages. This approach is applied to a biomass evolution model.
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Dates et versions

inria-00506398 , version 1 (27-07-2010)

Identifiants

  • HAL Id : inria-00506398 , version 1
  • PRODINRA : 40042

Citer

Fabien Campillo, Rivo Rakotozafy, Vivien Rossi. Bayesian numerical inference for hidden Markov models. International Conference on Applied Statistics for Development in Africa Sada'07, Feb 2007, Cotonou, Benin. 6 p. ⟨inria-00506398⟩
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