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Easy computation of Bayes factors and normalizing constants for mixture models via mixture importance sampling (2001)

by M Edmond, A Raftery, J Russell
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Iterated Importance Sampling in Missing Data Problems

by Gilles Celeux, Jean-Michel Marin, Christian P. Robert , 2005
"... Missing variable models are typical benchmarks for new computational techniques in that the ill-posed nature of missing variable models o#er a challenging testing ground for these techniques. This was the case for the EM algorithm and the Gibbs sampler, and this is also true for importance sampling ..."
Abstract - Cited by 11 (2 self) - Add to MetaCart
Missing variable models are typical benchmarks for new computational techniques in that the ill-posed nature of missing variable models o#er a challenging testing ground for these techniques. This was the case for the EM algorithm and the Gibbs sampler, and this is also true for importance sampling schemes. A population Monte Carlo scheme taking advantage of the latent structure of the problem is proposed. The potential of this approach and its specifics in missing data problems are illustrated in settings of increasing di#culty, in comparison with existing approaches. The improvement brought by a general Rao--Blackwellisation technique is also discussed.
The National Science Foundation
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