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Two Metropolis-Hastings algorithms for posterior measures with
  non-Gaussian priors in infinite dimensions

Two Metropolis-Hastings algorithms for posterior measures with non-Gaussian priors in infinite dimensions

20 April 2018
Bamdad Hosseini
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Papers citing "Two Metropolis-Hastings algorithms for posterior measures with non-Gaussian priors in infinite dimensions"

3 / 3 papers shown
Title
Adaptive Dimension Reduction to Accelerate Infinite-Dimensional
  Geometric Markov Chain Monte Carlo
Adaptive Dimension Reduction to Accelerate Infinite-Dimensional Geometric Markov Chain Monte Carlo
Shiwei Lan
21
10
0
15 Jul 2018
Well-posed Bayesian Inverse Problems with Infinitely-Divisible and
  Heavy-Tailed Prior Measures
Well-posed Bayesian Inverse Problems with Infinitely-Divisible and Heavy-Tailed Prior Measures
Bamdad Hosseini
35
34
0
23 Sep 2016
Fast Markov chain Monte Carlo sampling for sparse Bayesian inference in
  high-dimensional inverse problems using L1-type priors
Fast Markov chain Monte Carlo sampling for sparse Bayesian inference in high-dimensional inverse problems using L1-type priors
F. Lucka
38
30
0
01 Jun 2012
1