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arxiv: 1410.6151 · v1 · pith:VV45SOKPnew · submitted 2014-10-22 · 🧮 math.NA · cs.NA· stat.CO

Small-noise analysis and symmetrization of implicit Monte Carlo samplers

classification 🧮 math.NA cs.NAstat.CO
keywords implicitsamplerssmallsymmetrizationalgorithmsanalysisnoisesampling
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Implicit samplers are algorithms for producing independent, weighted samples from multi-variate probability distributions. These are often applied in Bayesian data assimilation algorithms. We use Laplace asymptotic expansions to analyze two implicit samplers in the small noise regime. Our analysis suggests a symmetrization of the algo- rithms that leads to improved (implicit) sampling schemes at a rel- atively small additional cost. Computational experiments confirm the theory and show that symmetrization is effective for small noise sampling problems.

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