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On a generalization of the preconditioned Crank-Nicolson Metropolis algorithm

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Metropolis algorithms for approximate sampling of probability measures on infinite dimensional Hilbert spaces are considered and a generalization of the preconditioned Crank-Nicolson (pCN) proposal is introduced. The new proposal is able to incorporate information of the measure of interest. A numerical simulation of a Bayesian inverse problem indicates that a Metropolis algorithm with such a proposal performs independent of the state space dimension and the variance of the observational noise. Moreover, a qualitative convergence result is provided by a comparison argument for spectral gaps. In particular, it is shown that the generalization inherits geometric ergodicity from the Metropolis algorithm with pCN proposal.

Daniel Rudolf, Bj\"orn Sprungk• 2015

Related benchmarks

TaskDatasetResultRank
Inverse Problem1D Darcy Flow d=32
Relative Inversion Error (1% Noise)31.64
5
Bayesian Inverse Problem2D Navier-Stokes d=32
Relative Inversion Error (1% Noise)0.491
5
Bayesian Inverse Problem2D Navier-Stokes d=64
Relative Inversion Error (1% Noise)46.86
5
Inverse Problem1D Darcy Flow d=64
Relative Inversion Error (1% Noise)0.316
5
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